For most passengers, air travel usually takes the form of reserving seats on large commercial aircraft. The larger airline operators typically route their aircraft according to a well-known hub and spoke pattern where aircraft fly from points to a hub and then back out to points. For example, to fly from Spokane, Wash., to Austin, Tex. on Alaska Airlines, the passenger usually books a route that includes a first leg from Spokane to Seattle a second leg from Seattle to Austin. The return flight is just the opposite, with a first leg from Austin to Seattle, and a second leg from Seattle to Spokane. In this scenario, Seattle functions as the hub for Alaska Airlines with the spokes being the legs to Spokane and Austin. Due to this hub-and-spoke arrangement and the larger number of passengers, this is the most affordable way to travel by air.
For people that live more remotely, and not near larger cities with airports, this commercial way to travel is more difficult. For instance, if a passenger wanted to travel from Santa Cruz, Calif. to Sun Valley, Id., the commercial trip would involve driving to a commercial airport like San Jose or San Francisco, following a hub-and-spoke pattern to Boise, Id., and then finding other transportation (such as a local private plane or automobile to Sun Valley). Private or chartered air travel has evolved to allow a more point-to-point solution so that the passenger could fly directly from a smaller airport near Santa Cruz to an airport near Sun Valley. Unfortunately, private or chartered air travel is significantly more expensive than commercial air travel. This expense is due in part to the fact that carriers cannot leverage larger numbers of passengers and the cost-effective hub-and-spoke arrangement for mass travel, making each individual flight costlier. As a result of this cost, many of the smaller aircraft that are privately owned or used in charters remain on the ground for much of the time and often sit idle 90% of the time. And even when the aircraft is used, there is often significant unused flight segments as part of the overall operation. In our example, for instance, the aircraft may return from Sun Valley to Santa Cruz without the passenger. Later, the aircraft may have to return to Sun Valley in an unused segment to pick up and return the passenger to Santa Cruz. This cost is added to the full charter service, contributing to the higher cost. There is much waste in the private and chartered ecosystem, keeping costs high. Unfortunately, potential travelers are not well versed in private air travel and the reasons for these economics and hence rarely pursue the option of private or charted aircraft due the high costs.
Accordingly, there is a need for a way to reduce the costs of private air travel, increase the efficiency for operators, and expose private air travel in a more compelling light for potential air travelers.
This Summary is provided to introduce a selection of concepts in a simplified form that are further described below in the Detailed Description. This Summary is not intended to identify key features or essential features of the claimed subject matter, nor is it intended to be used to limit the scope of the claimed subject matter.
This disclosure describes techniques for analyzing flights and identifying opportunities to provide flights to passengers that might not otherwise be made available. Benefits of these systems and methods may include filling more seats in aircraft that would otherwise go unfilled providing more flight opportunities to passengers as well as increasing opportunities to sell more flights for operators of the aircraft. For example, a charter operator might increase revenue through marketing automation and increased marketing reach they could otherwise not access themselves. Additionally, the system may provide tools for marketing and monetizing an operator's unused aircraft capacity. Additionally, the system may provide tools to move aircraft to areas where a demand will be, for example, by generating and selling flights that move the aircraft in that direction over the time leading up to the demand
The Detailed Description is set forth with reference to the accompanying figures. In the figures, the left-most digit(s) of a reference number identifies the figure in which the reference number first appears. The use of the same reference numbers in different figures indicates similar or identical items.
Overview
This disclosure describes techniques for analyzing flights and identifying opportunities to provide flights to passengers that might not otherwise be made available. Benefits of these techniques may include filling more seats in aircraft that would otherwise go unfilled, providing more flight opportunities to passengers, and increasing opportunities to sell more flights for operators of the aircraft. Additionally, the techniques may provide tools for marketing and monetizing an operator's unused aircraft capacity.
The techniques are implemented by various computing systems, computer-implemented processes, and user interfaces that are directed to and designed for FAR part 135 charter operators to reach more of their desired customers, simplify their marketing activities, and sell more flights. Additionally or alternatively, operators operating under FAR parts 121, 125, or 91K, as well as cargo operators may implement the disclosed techniques. The system may comprise a cloud-based service that helps the charter operator reach more desired customers by marketing flights to the public online via social media and networks (Facebook™, Twitter™, Google+™, LinkedIn™); online flight search tools (online travel agents—OTAs) such as Kayak™, Hipmunk™, and Google Flights™; and through digital marketing of the system's flight portal.
An operator may input flight segments they would like to market, such as repositioning flights, upcoming empty legs, or simply new charter legs. The system may increase the likelihood of selling a given segment by using real time demand prediction and inventory of flight segments to generate a large selection of possible ephemeral flight options (EFOs). Additionally, the system may identify a location where demand is predicted at an upcoming time. Here the system may generate flights that move the aircraft towards the location of the predicted demand prior to the time of the demand, as for example, a proactive flight scheduling approach. The system may predict demand based at least in part on scheduled events based databases, weather predictions, news, among other sources of information. Additionally or alternatively, the system may, based on an indication of an operator that the aircraft will be located at a given location for a given window of time, generate ephemeral flights from that location, or nearby locations, returning the aircraft to that location before the end of the window. The operator may select which of the EFOs to market directly to the public.
Various embodiments contemplate techniques for inputting flight segments. For example, an operator may input two airports, an origin and a destination, and a flight window which is the earliest departure the operator is willing to make from the origin combined with the latest time the operator wishes the aircraft to arrive at its destination. Various embodiments contemplate that the system may have a default, where the operator has a customizable home base identified for each aircraft, and which may be used when computing the direct operating costs to reposition the aircraft to the origin, the cost of the customer flight itself, and the cost of the repositioning flight from the destination back to home base. When creating a segment, the operator may set a “minimum acceptable price” for the customer flight itself. Various embodiments contemplate that the minimum acceptable price may take into account the total direct operating costs for that flight (for example, the aircraft's hourly rate multiplied by the total travel time, including repositioning legs). Additionally or alternatively, various embodiments contemplate that the minimum acceptable price may not be tied to direct operating costs at all. For example, an operator may have already sold multiple segments, where the original purchaser will only occupy a subset of the multiple segments, or the operator may be flying to the location for other reasons (for example, personal reasons, including, but not limited to, vacations, appointments, meetings, among others. In this example, the operator may set the minimum acceptable price much lower than the direct operating costs, since the operating costs are already committed. However, the operator may adjust the minimum acceptable price up or down as desired. Additionally or alternatively, the operator may reduce prices based on competition with other operators or other means of transportation.
Various embodiments contemplate taking operator defined constraints, crossing those against a demand prediction, showing the operator a series of flight options which may be optimized by route and time to have a high probability of selling, and allows the operator to publish these ephemeral flights, for example, with a single click. The operator may configure automatic filtering of these flight options to avoid flights that are too short or too long, flights involving airports the operator does not wish to service, flights that involve weather or time-of-day conditions the operator wishes to avoid, and flights that compromise crew constraints or crew duty hour constraints, for example, flights that exceed a maximum daily flight time limit. Various embodiments contemplate that the system may have a flight publishing engine. Various embodiments cause the flight publishing engine to adhere to rules governing the publishing of flights (for example, FAR part 110 definition of “on-demand charter”) so the operator doesn't have to manage this complexity.
Various embodiments provide automatic prices of EFOs based on the minimum acceptable price the operator inputted on the original flight segment. The system may automatically determine a price for each EFO based on that minimum acceptable price plus any additional cost incurred for additional flight time, additional segments, or airport fees incurred in serving that option. The operator may either accept these prices or override them with a desired price. Various embodiments contemplate that the operator will always receive the exact amount shown for serving that route, and will always have final say on all flight bookings before they are confirmed.
Additionally or alternatively, any ephemeral flight option that the operator does not want to serve for any reason may be removed and not be marketed. When the operator is satisfied with the prices and routes of the EFOs, the operator may submit the flights. The system may then distribute the submitted EFOs to the public across various marketing channels. When a customer requests a flight booking, the operator may receive a notification and may confirm the flight via a mobile device, computer, or contact the customer directly to discuss their trip details before confirming the flight. Upon the flight booking confirmation, all ephemeral flight options that conflict with that flight booking may be automatically pulled from all marketing channels.
Illustrative Operating Environment and Flights
Additionally or alternatively, additional EFOs may be identified. For example, illustrative embodiments may identify location C 116 as possible location for an EFO. Based at least in part of the AFW discussed above, the system may note a demand, a request, or otherwise identify a potential for a flight 118 to location C from location O or for a flight 120 from location C to location A. As discussed elsewhere in this disclosure, potential flights 118 and 120 may be extrapolated to identify EFOs. Similarly, based at least in part on the AFW after flight 108, additional potential flights (without arrows) may be identified from location A to location C and/or from location C to location O.
Additionally or alternatively, an AFW may exist between flights 102 and 108. As such, there may be an AFW where the aircraft originates from location B at the beginning of the AFW and needs to return to location B no later than the end of the AFW. Various embodiments contemplate that the system may identify additional EFOs based on this AFW. For example, location D 122 may be within a certain geographic range of location B. Based at least in part on the AFW, the system may identify flight 124 from location B to location D as a possibility to create EFOs. Similarly, the system may identify flight 126 from location D to location B as a possibility to create EFOs. Additionally or alternatively, location E 128 may be within a certain geographic range of location B and may or may not be within a certain geographic range of location D. As discussed with respect to location D, the system may identify flight 130 from location B to location E and flight 132 from location E to location B as possibilities to create EFOs. Additionally or alternatively, based at least in part on the AFW and the geographic range between locations B, D, and E, the system may identify flight 134 from location E to location D and flight 136 from location D to location E as possibilities to create EFOs.
Additionally or alternatively, the system may combine various legs to identify additional effective flights. For example, the system may identify a flight from location B to location D with a stop at location E. This example, would look to the combination of flights 130 and 134 as a possibility to create EFOs. This example may also be combined with flight 126 from location D to location B or flights 136 and 132 from location D to location B with a stop at location E. This approach may be expanded to other combinations of the identified locations as well as other locations (not shown). These combinations may provide additional flight options to further leverage the AFW where a demand or opportunity exists to fly to multiple cities within the AFW where different passengers desire to move between different cities. Additionally or alternatively, multiple operators providing different flight legs may be combined to generate an effective “round trip” for a user.
Additionally or alternatively, various embodiments contemplate that the return flight 108 of the chartered flight 102 is either canceled or not booked in the first place. In this example, since the operator is expected to return the plane to location O, the system may identify flight 138 from location B to location O as a possibility to create EFOs based on the AFW, since flight 138 might otherwise be an empty leg flight. Additionally or alternatively, the system may identify flight 108 from location B to location A as a possibility to create EFOs as well as flight 114 from location A to location O. Additionally or alternatively, the system may identify flight 140 from location D to location O as a possibility to create EFOs. Additionally or alternatively, the system may predict a future demand at a future time at a future location. In this example, the system may generate ephemeral flights that move on or more aircraft in the direction of the future location prior to the future time, to be in a position to meet the predicted future demand.
While the discussion identifies locations A, B, C, D, E, and O with identified arrows connecting some of the locations, they are merely limited illustrative examples. Rather, this disclosure is intended to show a large number of available permutations that the system may identify to create EFOs from. For example, based on the AFW, the system may identify a flight from location D to location C to location O to create EFOs based upon. Additionally or alternatively, based on the AFW, the system may identify location B to location E to location D to location B to location E to location D to location B as a possibility to create EFOs from. (In this example, there may be a demand for multiple repeating flights during the AFW that the system may identify and the operator may fulfill. For example, the operator may fly turns between several locations during the AFW.)
Illustrative Available Flight Windows and Ephemeral Flight Options
The system may use AFW 202 to begin generating possible ephemeral flight options (EFOs). For example, the system may consider geographic distances, geographic locations, airport configurations, anticipated weather, anticipated head or tail winds, airport congestion, as well as operator preferences, predicted consumer demand that may be found at an airport, flight delays or disruptions to commercial service, events such as sports, concerts, conventions, rallies that may affect demand predictions, among others to generate possible EFOs. For example, as discussed with respect to
One option is to offer flight 112 with a departure window. For example, flight 112 is available to leave between times 206 and 218 arriving at location A no later than time 208 (or 216). Another option is to offer flight 112 with an arrival window of time between time 220 and time 208 (or 216) leaving no earlier than time 206. However, current flight scheduling systems and associated market places are not configured to handle flights based on departure or arrival windows very well, if at all. As such, it may be beneficial to provide discrete flight options that reflect the flight windows.
With the AFW 202 and associated flight information, preferences, etc, the system may generate any number of possible ephemeral flight options originating from location O and arriving at location A. For example, the system may generate EFO 1A, EFO 1B, . . . EFO 1x as shown in
Additionally or alternatively, the separation of EFO departure or arrival times may be clustered more tightly together at certain times of the day or certain events. For example, if the AFW 202 includes a portion of traditional business commuting times, more EFOs may be generated across those traditional commuting times when compared to other portions of the AFW 202. Additionally or alternatively, more EFOs may be generated after an event is expected to end, for example a trade show, conference, sporting event, concert, festival, political event, among others. While fewer EFOs may be generated during the event. Similarly, relatively more EFOs may be generated prior to an event such that the arrival of the EFOs is before or close to the start of the event. While fewer EFOs may be generated during or significantly before the event.
Additionally or alternatively, the separation of time between EFOs may seek to strike a balance between a large number of EFOs providing granularity of flight options to potential passengers to not overwhelming flight scheduling systems and market places with too large a number of EFOs or causing potential passengers to be overwhelmed by too many choices. Additionally or alternatively, depending on the variables discussed throughout this disclosure among others not discussed, there is a balance that may be struck on EFO granularity that may lead to flight consolidation. For example, a first level of EFO granularity may cause separate potential passengers to come together to identify one EFO or relatively closely situated EFOs such that the separate potential passengers may ultimately fly together. Flying together may provide the separate potential passengers and/or the operator an increased efficiency that may result in reduced fares and/or increased revenue. Where a second level of EFO granularity, that may be a higher granularity than the first level of EFO granularity, may lead to the separate potential passengers selecting different flights that may lead to decreased efficiency since two separate flights may ultimately be taken. Additionally or alternatively, the system may substitute aircraft of higher or lower capacity to meet the demand for the route.
The system may use AFW 302 to begin generating possible ephemeral flight options (EFOs). For example, the system may consider geographic distances, geographic locations, airport configurations, anticipated weather, anticipated head or tail winds, airport congestion, as well as operator preferences, among others to generate possible EFOs. For example, as discussed with respect to
In this example, in addition to offering flights with departure and/or arrival windows, the system may generate EFOs. For example, with AFW 302 and associated flight information, preferences, etc, the system may generate any number of possible ephemeral flight options originating from location B and arriving at another location, for example location D. Additionally or alternatively, the system may identify a flight between location D and location E to based ephemeral flights on. Since the aircraft will be at location B at the beginning of AFW 302, the system takes into account a relocation flight 318 from location B to location D arriving at time 320. Similarly, the system will take into account a relocation flight 322 from location E to location B leaving location E not later than time 324.
With this additional information, the system may generate EPOs. For example, the system may generate EFO 2A, EFO 2B, . . . EFO 2x as shown in
Additionally or alternatively, in the this example, relocation flights 318 and 322 may be considered empty leg flights of flight 136 from location D to location E. As such, the system may generate EFOs based on flight 124 from location B to location D and flight 132 from location E to location B. The system may define effective AFWs for each flight 124 and flight 136. For example, an effective AFW for flight 124 may range from time 312 to time 326. This allows time for flight 136 and flight 132 to return the aircraft to location B. Additionally or alternatively, this approach may be expanded for additional locations not shown in
The system may use AFW 402 to begin generating possible ephemeral flight options (EFOs). For example, the system may consider geographic distances, geographic locations, airport configurations, anticipated weather, anticipated head or tail winds, airport congestion, predicted demands as well as operator preferences, among others to generate possible EFOs. For example, as discussed with respect to
In this example, in addition to offering flights with departure and/or arrival windows, the system may generate EFOs. For example, with AFW 402 and associated flight information, preferences, etc, the system may generate any number of possible ephemeral flight options originating from location B and arriving at another location, for example location D. Additionally or alternatively, the system may identify a flight between location D and location E to based ephemeral flights on. Since the aircraft will be at location B at the beginning of AFW 402, the system takes into account a relocation flight 418 from location B to location D arriving at time 420. Similarly, the system will take into account a relocation flight 422 from location E to location B leaving location E not later than time 424. For example, a consumer may see or indicate an “arrive by” time or “arrive not later than” time.
With this additional information, the system may generate EPOs. For example, the system may generate EFO 3A, EFO 3B, . . . EFO 3x as shown in
Additionally or alternatively, the system may identify a flight between location E and location B to based ephemeral flights on. Since the aircraft will be at location B at the beginning of AFW 402, the system takes into account a relocation flight 430 from location B to location E arriving at time 432. With this information, the system may generate EFO 4A, EFO 4B, . . . EFO 4x as shown in
Additionally or alternatively, in the this example, relocation flight 418 and 422 may be considered empty leg flights of flight 136 from location D to location E and flight 430 may be considered an empty leg flight of flight 132 from location E to location B. As such, the system may generate EFOs based on flight 124 from location B to location D, flight 132 from location E to location B, and flight 130 from location B to location E. The system may define effective AFWs for each flight 124, flight 136, and flight 130. For example, an effective AFW for flight 124 may range from time 412 to time 426. This allows time for flight 136 and flight 132 to return the aircraft to location B. Additionally or alternatively, this approach may be expanded for additional locations not shown in
The system may use AFW 502 to begin generating possible ephemeral flight options (EFOs). For example, the system may consider geographic distances, geographic locations, airport configurations, anticipated weather, anticipated head or tail winds, airport congestion, as well as operator preferences, among others to generate possible EFOs. For example, as discussed with respect to
In this example, in addition to offering flights with departure and/or arrival windows, the system may generate EFOs. For example, with AFW 502 and associated flight information, preferences, etc, the system may generate any number of possible ephemeral flight options originating from location B and arriving at another location, for example location D. Additionally or alternatively, the system may identify a flight between location D and location E to based ephemeral flights on. Since the aircraft will be at location B at the beginning of AFW 502, the system takes into account a relocation flight 518 from location B to location D arriving at time 520. Similarly, the system will take into account a relocation flight 522 from location E to location B leaving location E not later than time 524.
With this additional information, the system may generate EFOs. For example, the system may generate EFO 5A, EFO 5B, . . . EFO 5x as shown in
Additionally or alternatively, the system may identify a flight between location E and location B to based ephemeral flights on. Since the aircraft will be at location B at the beginning of AFW 502, the system takes into account a relocation flight 530 from location B to location E arriving at time 532. With this information, the system may generate EFO 6A, EFO 6B, . . . EFO 6x as shown in
In this example, EFOs 5A through 6x are generated and made available to potential passengers. As discussed elsewhere in this disclosure, the EFOs may be made available through various avenues. For example, they may be published on a flight distribution market place, various social media outlets, among others. For purposes of this example, after the EFOs are made available, a potential passenger books EFO 5B. Various embodiments contemplate that upon booking EFO 5B, the system may identify which EFOs to delist, retract, or cancel depending on how the EFOs were made available to potential passengers.
Various embodiments contemplate that this process may repeat as various EFO become unavailable over time. For example, various EFOs may become unavailable due to the booking of conflicting EFOs as discussed above, as well as changes in an operator's preferences, changes in available aircraft, changes in weather, changes in available airports, changes in scheduled events, changes in chartered flights, among others.
Illustrative Flight Windows
In this illustrative example, when a Departure Airport=Arrival Airport, they system may treat this as a transient window. Here, Airport A is the airport that aircraft is transient at (available for a flight within a window) where Airport B is an alternate airport where aircraft could go. In this example, the pricing may be based at least in part on PriceA−B=PriceB−A=HourlyRate*(ETEA−B+ETEB−A)+Feesairport B+Feesairport A. Here, the system may propose to leave Airport A fees out of the calculation for simplicity. Similarly, for simplicity, the system need not collect a “Minimum Price,” for example, it may be set to 0. Here the system may set a radius for transient search based at least in part on definitions at the Operator level, for example, 1000 nm as default value, where the operator may change it. Further, in this example, the pricing for overnight and homebases is ignored for simplicity.
In this example, an aircraft is “transient” when it is away from its homebase. It is sitting at an airport, having dropped off a passenger or is simply waiting for a new passenger to book it. The difference between a repositioning flight window and a transient flight window may be described as: repositioning flight window: Aircraft has to go from A to B. A→B, a “minimum price” can be assigned. While a transient flight window: Aircraft is at A and will remain at A (A→A), but it could go A→B→A. Where Pricing may depend on what B is, and how much cost the aircraft is incurring to sit at A.
In this example some pricing differences may be based, at least in part, on a repositioning flight window, where the repositioning flight window may capture a need for an aircraft to go from A to B. The aircraft has to make that trip. The cost might be covered by another passenger (it's revenue recovery exercise) or it could just be a new flight that the operator is incurring to get their aircraft to the “right” or a desired location. The price can be captured as a minimum price because the price for A to B is not necessarily the actual DOC. Rather, it may simply be simply the amount the operator requires for the flight from A to B to happen. Any additional cost incurred (for a flight option) may to be compensated at the full hourly rate.
In the case of a Transient flight window, there is no specific route to assign a minimum price to. The price is dependent on what airport “B” is. If the aircraft is incurring costs by being away from homebase, those may be subtracted from the DOC. If the aircraft is incurring costs specific to sitting at airport “A”, those may be subtracted from the DOC.
Here, for simplicity, the example ignores the subtraction of costs, and just gives the operator a “transient hourly rate” which ignores the subtraction of costs. Here the system may give the operator a “transient hourly rate” which he can control each time entering a transient flight window. That rate could be higher or lower than operator's standard hourly rate for the aircraft. The system may then generate the possible “B”s (flight options from A−B−A) and price as flight time+fees for each segment.
Various embodiments contemplate using the full hourly rate, and ignoring any cost savings. For example, the system may use the full hourly rate, and try to estimate and then subtract anticipated transient costs. Here, the system may identify a transient window because airport A=airport A. We can identify a homebase window because airport A=airport A & airport A=aircraft homebase airport.
Here the system may identify possible B's within a circle of a given radius. Radius could be a function of the range of an aircraft, or default distance. In this example, when the system has the set of possible B's { }, the system may calculate the price of each flight segment A−B and B−A as PriceA−B=PriceB−A=HourlyRate*(ETEA−B+ETEB−A)+Feesairport B+Feesairport A.
However, in an example, where there are multi-day pricing with overnights, system may use Transient Windows: PriceA−B=PriceB−A=HourlyRate*(ETEA−B+ETEB−A)+Feesairport B+Feesairport A, where the Homebase Windows: PriceA−B=PriceB−A=HourlyRate*(ETEA−B+ETEB−A)+Feesairport B+Feesairport A*Nights at B*Overnight Rate
In this example, the pricing difference between Transient and Homebase windows may be caused since in the case of a transient window, the overnight cost is already being incurred by whoever created and paid for the transient opportunity. While an aircraft at homebase has no penalty for staying at homebase. When an aircraft leaves homebase, the new buyer may have to pay for any overnight charges he incurs at B, if he keeps the aircraft at B overnight.
Illustrative Operating Systems and Methods
At 904, the flight is sold and may be considered to be “concrete” in the respects that it has been sold and confirmed and is not speculative. However, various embodiments contemplate that the sold flight need not be sold or otherwise concrete. For example, the flight may merely be desired by an operator or suspected to be desired by a customer.
At 906, the system may determine whether all of the seats of the flight are sold, if they are not all sold, then the system may look to post the remaining seats at 908. If it is determined that the additional seats should be posted, then at 910, a price for the seats may be determined and the seats may be posted at 912. Various embodiments contemplate that the price for the additional seats may, but need not, be based on the price of the original flight booking. Further, however, at 906, if the seats are all sold or an 908, if the seats are not to be posted, or after the seats are posted at 912, the system may progress to 914, where the system may determine whether the aircraft starting position is different from the origin. If the starting position, for example, Boise, is different from the origin, Sun Valley, then the system determines whether the repositioning flight should be posted at 916. If it is to be posted, then the flight is posted at 918, for example through OTA flight posting at 920. However, if the starting position is not different from the origin at 914 or if the repositioning flight is not to be posted at 916, then, at 922, the system determines whether the ending position is different from the destination. If it is different, for example, destination San Carlos, is different from the ending position of Boise, then, at 924 the system determines whether the repositioning flight from the destination to the end position should be posted. At 926, if it is to be posted, then the repositioning flight may be posted, for example on a OTA flight posting at 920. However, if the end position is not different from the destination, or the repositioning flight is not to be published, then, at 928, they system may show EFO based on any of the repositioning flights. At 930, the system determine whether one or more of the EFOs are to be posted. At 932, if they are, then a subset of EFOs may be selected for posting at 934, through, for example, OTA flight posting at 920. At 930, if no EFOs are to be posted, or at 932, if one or more EFOs are selected for posting, then, at 936, selected information may be displayed through a user interface. Additionally or alternatively, various embodiments contemplate that the user interface may be updated with information throughout or at other times in flow chart 900.
Illustrative Computing Device and Illustrative Operational Environment
In at least one configuration, the computing device 1000 includes at least one processor 1002 and system memory 1004. The processor(s) 1002 may execute one or more modules and/or processes to cause the computing device 1000 to perform a variety of functions. In some embodiments, the processor(s) 1002 may include a central processing unit (CPU), a graphics processing unit (GPU), both CPU and GPU, or other processing units or components known in the art. Additionally, each of the processor(s) 1002 may possess its own local memory, which also may store program modules, program data, and/or one or more operating systems.
Depending on the exact configuration and type of the computing device 1000, the system memory 1004 may be volatile (such as RAM), non-volatile (such as ROM, flash memory, miniature hard drive, memory card, or the like) or some combination thereof. The system memory 1004 may include an operating system 1006, one or more program modules 1008, and may include program data 1010. The operating system 1006 includes a component-based framework 1034 that supports components (including properties and events), objects, inheritance, polymorphism, reflection, and provides an object-oriented component-based application programming interface (API). The computing device 1000 is of a very basic illustrative configuration demarcated by a dashed line 1012. Again, a terminal may have fewer components but may interact with a computing device that may have such a basic configuration.
Program modules 1008 may include, but are not limited to, applications 1036, a control module 1034, a user interface 1040, a DOC control 1042, Control Engines 1044, Marketing Engines 1046, and/or other components 1038.
The computing device 1000 may have additional features and/or functionality. For example, the computing device 1000 may also include additional data storage devices (removable and/or non-removable) such as, for example, magnetic disks, optical disks, or tape. Such additional storage is illustrated in
The storage devices and any associated computer-readable media may provide storage of computer readable instructions, data structures, program modules, and other data. Computer-readable media includes, at least, two types of computer-readable media, namely computer storage media and communication media.
As used herein, “computer-readable media” includes computer storage media and communication media.
Computer storage media includes volatile and non-volatile, removable and non-removable media implemented in any method or technology for storage of information, such as computer-readable instructions, data structures, program modules, or other data. Computer storage media includes, but is not limited to, random access memory (RAM), read only memory (ROM), electrically erasable programmable ROM (EEPROM), flash memory or other memory technology, compact disk ROM (CD-ROM), digital versatile disks (DVD) or other optical storage, magnetic cassettes, magnetic tape, magnetic disk storage or other magnetic storage devices, or any other medium that can be used to store information for access by a computing device.
In contrast, communication media may embody computer-readable instructions, data structures, program modules, or other data in a modulated data signal, such as a carrier wave. As defined herein, computer storage media does not include communication media.
Moreover, the computer-readable media may include computer-executable instructions that, when executed by the processor(s) 1002, perform various functions and/or operations described herein.
The computing device 1000 may also have input device(s) 1018 such as a keyboard, a mouse, a pen, a voice input device, a touch input device, etc. Output device(s) 1020, such as a display, speakers, a printer, etc. may also be included.
The computing device 1000 may also contain communication connections 1022 that allow the device to communicate with other computing devices 1024, such as over a network. By way of example, and not limitation, communication media and communication connections include wired media such as a wired network or direct-wired connections, and wireless media such as acoustic, radio frequency (RF), infrared, and other wireless media. The communication connections 1022 are some examples of communication media. Communication media may typically be embodied by computer readable instructions, data structures, program modules, etc.
The illustrated computing device 1000 is only one example of a suitable device and is not intended to suggest any limitation as to the scope of use or functionality of the various embodiments described. Other well-known computing devices, systems, environments and/or configurations that may be suitable for use with the embodiments include, but are not limited to, personal computers, server computers, hand-held or laptop devices, multiprocessor systems, microprocessor-based systems, set top boxes, game consoles, programmable consumer electronics, network PCs, minicomputers, mainframe computers, distributed computing environments that include any of the above systems or devices, implementations using field programmable gate arrays (“FPGAs”) and application specific integrated circuits (“ASICs”), and/or the like.
The implementation and administration of a shared resource computing environment on a single computing device may enable multiple computer users to concurrently collaborate on the same computing task or share in the same computing experience without reliance on networking hardware such as, but not limited to, network interface cards, hubs, routers, servers, bridges, switches, and other components commonly associated with communications over the Internet, as well without reliance on the software applications and protocols for communication over the Internet.
Illustrative System and Operational Environment
Illustrative Fight Generation Example
Commercial aviation customers have been trained to search for flights based on airports and scheduled times. This works well for airlines that are trying to fill planes, but it does not address the real customer need: finding travel options that get them from their current location to their desired location. For example, if a user wants to stay at the Wynn in Las Vegas tonight, they may go to a search engine or an OTA like Google Flights or Kayak, enter in a departure airport, like SFO, and an arrival airport, like LAS. They then select a flight based on price and departure or arrival time.
Illustrative embodiments provide a different workflow. For example, the use may tell the system where they want to go (e.g., Wynn Hotel in Las Vegas) and when they want to be there. The service may present travel options that match this primary goal. Specifically, for example, the service may consult a ride-sharing application, such as Uber to find travel times from nearby airports to the Wynn. As a customer, they might not want the “cognitive load” of trying to figure this out themselves and adjusting the flight times accordingly. Similarly, pricing of these ride-sharing services may affect the user's decision as much as the ride duration, and as a customer, they may want the service to take pricing into account when it presents the options.
This same logic may also be true on the departure side of travel. For example, the customer may want the service to provide them with travel options from the departure location (Home, Work, Hotel, etc.), specifically finding ride-sharing options from the departure location to nearby airport locations.
Additionally, a customer, may be willing to pay more for travel options if they save travel time (or make departure times more agreeable, etc.). For example, it will take 90-120 minutes to drive from Santa Cruz, Calif. to San Francisco, Calif. (SFO airport), and if the user takes an Uber it will cost between $150-$200. Given that ride-sharing cost and travel time, the user may be willing to pay for a private aircraft charter (helicopter, jet, turbo-prop) from Watsonville, Calif. (WVI airport) to SFO.
A flight from WVI→SFO is 20 mins and may cost $200-400, the Uber from the user's house to WVI is 20 mins and costs $30. The customer may like the service to offer the option of paying $50-250 more to save 50-80 minutes travel time.
In addition, the customer may like the service to provide the option of flying out of WVI directly instead of having to go to SFO. Note, this option may cost the customer $0-$400 more than the flight out of SFO (depending on available aircraft proximity to WVI), but they will save 70-100 minutes of travel time to the airport to catch their flight. In this example, the total flight time difference to their destination airport should be no more than 20 mins longer, but it could also be shorter flight, again depending on available aircraft proximity to WVI.
The customer may want the system to evaluate many or all of the travel options and present options based on optimizing overall travel time and options based on optimizing overall price.
Various embodiments of the system may provide estimated time en-route (ETE) for aircraft, and aircraft models, for any route based on actual flights in the flight history database. Flight ETEs may be used extensively for both display and computation purposes. When an operator enters a flight, they specify the origin and destination airports for one of their aircraft. The system may be able to tell them how long that flight will take.
Illustrative ETE Computation
The system may naively compute the ETE based on the known cruising airspeed for their aircraft model, but there are a few limitations with this approach. For example, system would want to have knowledge of standard cruising airspeeds for all aircraft models, and would likely make an assumption about how the operator flies this particular plane (not all operators fly the same routes the same way, not all planes are flown the same way by all pilots, etc.).
However, using actual route flight times by aircraft and aircraft model, may help provide better ETE information for an operator. In some instances, the operator has flown the route for the flight they are entering before with the desired plane multiple times. In that case, the system may then provide a good estimate at the ETE based on what's happened in the past. If their plane hasn't flown this route before, the system may use the aircraft model and look at the ETEs for flights on this route for this aircraft model and provide an estimate based on historical information. The system may also compute airspeeds for each aircraft and aircraft model in the flight history to get a distribution of their airspeeds. However, in an example that the system doesn't have flight history for an operator's aircraft or aircraft model for a route, the system can compute the ETE for this route/plane based on rated airspeed.
Additionally or alternatively, machine learning may be used to predict ETEs for routes, aircraft types, specific aircraft, etc. The system may use a database of historical flights for commercial and GA. The system may use models based on specific aircraft types, specific routes, and specific aircraft. Using deep learning, the system may combine the outputs of these models into a final answer for a given aircraft/route/date-time.
Here, a radius around the locations is set. This radius may cause nearby airports to be included in the flight options that are generated. In this example, an operator inputs a repositioning leg 1302 of KDVO−KBOI. A customer may request a flight 1306 between KHWD−KSUN. Here, the system may generate a price for flight 1306 based on the following factors: PRICEKHWD−KSUN=[(ETEA+ETEB+ETEC)−ETEP]*HourlyRateaircraft+MinPriceP+FeesKHWD+FeesKSUN, where FeesKSUN and FeesKHWD are fees associated with the airports and have been collected them when pricing KDVOKSUN−KBOI and KDVO−KHWD−KBOI. Additionally, MinPriceP may include the FeesKBOI as that fee may be incorporated in the minimum price concept.
In this example, a consumer may search for a flight based at least in part on some subset of {arrival airport, departure airport, arrival date/time, filters}. The system may then look into flight windows to find the flight windows that contain: dates/time (evaluating whether the flight window matches the necessary date/time that was searched), airports (evaluating whether the flight window contain appropriate airports (either a primary or alternate airport)), filters (evaluating whether the flight window match necessary filters (aircraft class, operator, price)). In this example, for the ones that match, the system may calculate the price of the inferred flight option. For example, calculating route B 1306 in
As such,
Illustrative User Interfaces
For illustrative purposes, assume operator removed all other airport options except for KPSP, KVNY, KPSP with KPSP>KHWD. Here the ETE: 0:34, $1,350 (from minimum These are “flight options” and appropriate departure times that Date&Time window.
For the flight from KPSP to KHWD,
Although embodiments have been described in language specific to structural features and/or methodological acts, it is to be understood that the disclosure is not necessarily limited to the specific features or acts described. Rather, the specific features and acts are disclosed herein as illustrative forms of implementing the embodiments. Any portion of one embodiment may be used in combination with any portion of a second embodiment.
This Application claims the benefit of U.S. Provisional Patent Application No. 62/447,392 entitled “Operator Aero Ephemeral Flights,” filed on Jan. 17, 2017, which is incorporated herein by reference.
Number | Date | Country | |
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62447392 | Jan 2017 | US |