Operation of large machines, such as mining shovels, can be costly. Costs of operation can comprise a salary of an operator. Additional costs can include maintaining environmental conditions suitable for the operator. For example, mining shovels can work in harsh environments. As a result, it is possible for the operator to be injured. Also, in some operations, altitude sickness can be a concern.
It is also possible that the operator might not operate an expensive machine according to operational rules and guidelines. As a result, maintenance costs of the machine can be relatively high. Other costs can comprise operator training and opportunity costs associated with down-time of machines when operators are not available due to vacation, sickness, etc. Hence, a system and method of operating a shovel, without the cost of human operation is disclosed.
Certain exemplary embodiments can comprise a system and/or method for remote and/or autonomous operation of a machine. In an exemplary embodiment, the machine can be an excavator, such as an electric mining shovel. Autonomous control of the machine can reduce and/or eliminate operating personnel, which can significantly decrease costs associated with the machine.
A wide variety of potential embodiments will be more readily understood through the following detailed description of certain exemplary embodiments, with reference to the accompanying exemplary drawings in which:
When the following terms are used herein, the accompanying definitions apply:
Certain exemplary embodiments can provide a method for controlling a machine. The method can comprise a plurality of activities that can comprise determining a profile of a surface responsive to a scan of the surface. The method can comprise identifying a predetermined profile from a plurality of predetermined profiles, the identified predetermined profile a closest match of the plurality of predetermined profiles to the profile of the surface. The method can comprise determining a machine procedure based upon the identified predetermined profile. The method can comprise automatically executing the preferred machine procedure via a machine.
Certain exemplary embodiments can provide a system comprising a processor adapted to determine a profile of a surface responsive to a scan of the surface. The processor can be adapted to identify a predetermined profile from a plurality of predetermined profiles, the identified predetermined profile a closest match of the plurality of predetermined profiles to the profile of the surface. The processor can be adapted to determine a procedure based upon the identified predetermined profile. The processor can be adapted to provide the procedure to a machine.
Autonomous machines 1100, 1200, 1300 can be adapted to load a haulage machine such as haulage machine 1400. Haulage machine 1500 can be a fossil fuel powered mining haul truck, electric mining haul truck, rail car, flexible conveyor train, in-pit crushing hopper, and/or truck with an open bed trailer, etc. Haulage machine 1400 can be adapted to directly and/or wirelessly communicate with autonomous machines 1100, 1200, 1300 directly and/or via communication tower 1500. Haulage machine 1400 can receive instructions for movement and activities from an information device such as information device 1650.
System 1000 can comprise a vehicle 1450, which can relate to operation and/or maintenance of autonomous machines 1100, 1200, 1300. For example, vehicle 1450 can be associated with a management entity responsible for monitoring performance of autonomous machines 1100, 1200, 1300. In certain exemplary embodiments, vehicle 1450 can be associated with a maintenance entity receiving information requesting maintenance activities for autonomous machines 1100, 1200, 1300. In certain exemplary embodiments, vehicle 1450 can be associated with a regulatory entity responsible for monitoring safety related to operation of autonomous machines 1100, 1200, 1300. Vehicle 1450 can be equipped with a wireless receiver and/or transceiver and be communicatively coupled to autonomous machines 1100, 1200, 1300.
System 1000 can comprise a plurality of networks, such as a network 1600, a network 1700, a network 1900, and a network 1950. Each of networks 1600, 1700, 1900, 1950 can communicatively couple information devices to autonomous machines 1100, 1200, 1300 directly and/or via wireless communication tower 1500. A wireless transceiver 1625 can communicatively couple wireless communication tower 1500 to information devices coupled via network 1600.
Network 1600 can comprise a plurality of communicatively coupled information devices such as a server 1650. Server 1650 can be adapted to receive, process, and/or store information relating to autonomous machines 1100, 1200, 1300. Network 1600 can be communicatively coupled to network 1700 via a server 1675. Server 1675 can be adapted to provide files and/or information sharing services between devices coupled via networks 1600, 1700. Network 1700 can comprise a plurality of communicatively coupled information devices, such as information device 1725.
Network 1700 can be communicatively coupled to network 1900 and network 1950 via a firewall 1750. Firewall 1750 can be adapted to restrict access to networks 1600, 1700. Firewall 1750 can comprise hardware, firmware, and/or software. Firewall 1750 can be adapted to provide access to networks 1600, 1700 via a virtual private network server 1725. Virtual private network server 1725 can be adapted to authenticate users and provide authenticated users, such as an information device 1825, an information device 1925, and an information device 1975, with a communicative coupling to autonomous machines 1100, 1200, 1300.
Virtual private network server 1725 can be communicatively coupled to the Internet 1800. The Internet 1800 can be communicatively coupled to information device 1825 and networks 1900, 1950. Network 1900 can be communicatively coupled to information device 1925. Network 1975 can be communicatively coupled to information device 1975.
Information device 2300 can comprise a user interface 2350 and a client program 2325. In certain exemplary embodiments, information device 2300 can be adapted to provide, receive, and/or execute a digging routine related to machine 2100. Information device 2300 can be communicatively coupled to a memory device adapted to store programs and/or information related to machine 2100.
Wireless transceiver 2400 can be communicatively coupled to a network 2600 via a wireless transceiver 2500. Network 2600 can comprise information devices adapted to communicate via various wireline or wireless media, such as cables, telephone lines, power lines, optical fibers, radio waves, light beams, etc. Network 2600 can be public, private, circuit-switched, packet-switched, connection-less, virtual, radio, telephone, POTS, non-POTS, PSTN, non-PSTN, cellular, cable, DSL, satellite, microwave, twisted pair, IEEE 802.03, Ethernet, token ring, local area, wide area, IP, Internet, intranet, wireless, Ultra Wide Band (UWB), Wi-Fi, BlueTooth, Airport, IEEE 802.11, IEEE 802.11a, IEEE 802.11b, IEEE 802.11g, X-10, and/or electrical power networks, etc., and/or any equivalents thereof.
Network 2600 can be communicatively coupled to a server 2700, which can comprise an input processor 2750 and a storage processor 2725. Input processor 2750 can be adapted to receive and process received information regarding machine 2100. For example, input processor 2750 can receive information from sensors 2200, 2225, 2250. Storage processor 2725 can be adapted to process information received by server 2700 and store the information in a memory device such as memory device 2775. Storage processor 2725 can be adapted to store information regarding machine 2100 in a format compatible with a data storage standard such as Knowledge Builder, SQL Server, MySQL, Microsoft Access, Oracle, FileMaker, Excel, SYLK, ASCII, Sybase, XML, and/or DB2, etc.
Memory device 2775 can store information such as autonomous machine databases 2785 and autonomous machine routines 2795. Autonomous machine databases 2785 can comprise a database of a plurality of digging surface profiles. Each of the plurality of digging surface profiles can be linked and/or associated with a digging procedure. Autonomous machine databases 2785 can comprise digging procedure information. Digging procedure information can comprise heuristic rules relating to extraction techniques for material excavation by machine 2100. Digging procedure information can comprise alternative procedures to be selected for adaptive learning algorithms associated with material extraction, such as mining, by machine 2100.
Autonomous machine routines 2785 can comprise one or more of the following routines:
Network 2600 can comprise an information device 2800. Information device 2800 can comprise a client program 2860 and a user interface 2880. Information device 2800 can comprise an input processor 2850 and a report processor 2825. Input processor 2850 can be adapted to receive information from sensors 2200, 2225, 2250 regarding machine 2100. Report processor 2825 can be adapted to prepare and provide reports utilizing information from sensors 2200, 2225, 2250 regarding machine 2100.
At activity 3200 the autonomous shovel routines can load digging coordinates, a digging library, a digging topography, video representations of a digging surface, and/or sonar representations of the digging surface, etc. Information regarding the physical environment and digging procedures can be adapted for use in autonomously controlling the shovel.
At activity 3300 the shovel can be repositioned according to a procedure determined by the autonomous shovel routines. The shovel can be repositioned in a manner that comprises automatically adjusting an extended length of an electrical cable providing power to the shovel.
At activity 3400 a digging surface can be scanned. The scan can comprise determining an angle of repose of material to be mined and/or extracted by the shovel, a particle size distribution of a pile of earthen material, a largest rock in the pile, objects and/or topography that can interfere with activities of the shovel, and/or vehicles in the area of the shovel and/or haulage machines associated with the shovel.
At activity 3500 the scan of the digging surface can be utilized to identify a predetermined bank profile from a plurality of predetermined bank profiles. The identified predetermined bank profile can be a closest match of the plurality of predetermined bank profiles to a profile of the digging surface determined via the scan. Based upon this identification, a first shovel digging procedure is selected from a plurality of shovel digging procedures.
At activity 3600, the first shovel digging procedure can be optimized. The preferred shovel digging procedure can be optimized by determining a second shovel digging procedure. Results from the first shovel digging procedure and the second shovel digging procedure can be predicted and compared. Based upon the comparison a preferred shovel digging procedure can be selected.
At activity 3700, a power optimization routine can be executed to optimize loading. The power optimization routine can measure a power associated with a movement of a dipper associated with the shovel. The power optimization routine can be adapted to fill the dipper with earthen material in an optimal manner. The optimal manner can consider an amount of earthen material filling the dipper, an amount of energy used in filling the dipper, and/or an amount of material desired to be placed in a haulage vehicle.
At activity 3800, a digging procedure can be reclassified. The results from executing the preferred digging procedure can be compared to past results from alternative digging procedures. If results from the preferred digging procedure are improved, a stored procedure can be modified, which can result in a control system for the shovel that can adaptively learn and can adaptively improve performance.
At activity 3900, a haulage vehicle can be loaded by the shovel according to the preferred shovel digging procedure.
At activity 3950, data associated with the shovel can be exported. The exported data can comprise information related to the preferred digging procedure, production information related to the shovel, detected problems with the shovel, scheduled maintenance associated with the shovel, and/or records relating to movement of the shovel, etc.
Autonomous machine 4000 can comprise a plurality of sensors such as a sonar scanner 4200, optical scanner 4225, proximity sensor 4250, power sensor 4275, and machine positional limit sensor 4275. Sonar scanner 4200 and optical scanner 4225 can be adapted to provide a scan of a surrounding environment to machine 4400. For example, sonar scanner 4200 and optical scanner 4225 can be adapted to determine a profile of a digging surface upon which machine 4100 may dig. In certain exemplary embodiments, sonar scanner 4200 and optical scanner 4225 can be used to detect and/or provide a profile of objects in the vicinity of machine 4200. For example, sonar scanner 4200 and optical scanner 4225 can detect the present of a vehicle, such as a haulage vehicle or a service vehicle, in the vicinity of machine 4200.
Information provided by sonar scanner 4200 and optical scanner can be analyzed utilizing a pattern classification and/or recognition algorithm such as a decision tree, Bayesian network, neural network, Gaussian process, independent component analysis, self-organized map, and/or support vector machine, etc. The algorithm can facilitate performing tasks such as pattern recognition, data extraction, classification, and/or process modeling, etc. The algorithm can be adapted to improve performance and/or change its behavior responsive to past and/or present results encountered by the algorithm. The algorithm can be adaptively trained by presenting it examples of input and a corresponding desired output. For example, the input might be a plurality of sensor readings associated with an identification of a detected object or profile. The algorithm can be trained using synthetic data and/or providing data related to the component prior to previously occurring failures. The algorithm can be applied to almost any problem that can be regarded as pattern recognition in some form. In certain exemplary embodiments, the algorithm can be implemented in software, firmware, and/or hardware, etc.
Proximity sensor 4250 can be adapted to provide information regarding objects close to machine 4100 that might interfere with a movement of machine 4100. For example, proximity sensor 4250 can provide information regarding the presence of an object that interferes with a proposed relocation of machine 4100. For example, the presence of a large rock adjacent to a track of machine 4100 might prevent machine 4100 from traversing a path over the large rock.
Power sensor 4275 can be adapted to provide a measured motor power and/or torque associated with machine 4100. For example, power sensor 4275 can be adapted to provide a measured motor power for moving a dipper of an electric mining shovel in one or more directions. Information provided by power sensor 4275 can be used by an information device, such as information device 4300, to determine and/or optimize a digging procedure.
Machine positional limit sensor 4275 can be adapted for use in detecting an extent of motion of one or more parts of machine 4100. In certain exemplary embodiments, machine positional limit sensor 4275 can provide information indicative of a physical position of a dipper associated with machine 4100 in relation to a physical object. Information provided by machine positional limit sensor 4275 can be used to plan machine movements and relocations during an execution of the digging procedure. For example, machine positional limit sensor 4275 can provide information indicating that machine 4100 is too close to a portion of a bank to remove material therefrom. In certain exemplary embodiments, machine positional limit sensor 4275 can provide information indicating that machine 4100 is too far away to a portion of a bank to remove material therefrom.
Information device 4300 can comprise a user interface 4350, a client program 4325, and a repair system 4350. A user designing, operating, or troubleshooting autonomous machine 4100 can view information related to machine 4100 via user interface 4350. Client program 4350 can be adapted to provide information regarding and/or control machine 4100. For example, client program 4325 can be adapted to determine a digging procedure to be executed by machine 4100.
Repair system 4350 can be adapted to automatically repair a fault detected at machine 4100. For example, a variable frequency drive for an electric motor might fail. If machine 4100 comprises a switchable redundant and/or spare variable frequency drive, repair system 4350 can be adapted to automatically switch to the spare drive. As another example, a programmable logic controller processor might fail. If machine 4100 comprises a switchable spare programmable logic controller, repair system 4350 can be adapted to automatically switch to the spare programmable logic controller.
Machine 4100 can comprise a wireless receiver 4425. Wireless receiver 4425 can be adapted to receive Global Position System (GPS) information from a GPS satellite 4450. GPS information received via wireless receiver 4425 can comprise a location of machine 4100, a mining vehicle, and/or a haulage vehicle. Information received via wireless receiver 4425 can be adapted for use in planning and/or executing digging procedures by machine 4100.
Machine 4100 can comprise a network interface 4400, which can be a wired and/or wireless network interface, which can be adapted for use in transferring information regarding machine 4100 to and/or from information devices communicatively coupled to a network 4600. Network interface 4400 can be communicatively coupled to network 4600. Network interface 4400 can be adapted to receive instructions regarding the digging surface. Network interface 4400 can be adapted to receive instructions regarding a pocket of material to be removed by machine 4100. Information device 4300 and/or server 4700 can be adapted to use the instructions regarding the digging surface and/or the instructions regarding the pocket of material to determine a digging procedure for machine 4100.
Server 4700 can be communicatively coupled to machine 4100 via network 4600. In certain exemplary embodiments, the functionality described for server 4700 can be implemented via information device 4300 comprised in machine 4100. Server 4700 can comprise a processor 4725, which can be adapted to determine a profile of a digging surface responsive to a scan of the digging surface. For example, via a pattern recognition algorithm, processor 4725 can characterize information detected during a scan of the environment of machine 411 by sonar scanner 4200 and optical scanner 4225. Information relating to the profile can be compared to other stored profiles. For example, processor 4725 can execute instructions adapted to identify a predetermined bank profile from a plurality of predetermined bank profiles, which can be stored in a memory device such as memory device 4775. The identified predetermined bank profile can be a closest match of the plurality of predetermined bank profiles to the profile of the digging surface.
Processor 4725 can be adapted to execute instructions to determine a digging procedure for machine 4100 based upon the identified predetermined bank profile. Processor 4725 can be adapted to use received GPS information regarding machine 4100, a haulage vehicle, and/or a mining vehicle in determining the first digging procedure.
Responsive to the identified predetermined bank profile, processor 4725 can be adapted to execute an optimization routine to determine a second digging procedure. Processor 4725 can be adapted to execute instructions to compare the first digging procedure to the second digging procedure (and/or additional digging procedures) to determine an optimal, improved, and/or preferred digging procedure. Processor 4725 can be adapted to provide the digging procedure to machine 4100.
Memory device 4775 can be adapted to store autonomous machine databases 4785 and autonomous machine routines 4795. For example, autonomous machine databases 4785 can comprise the plurality of predetermined bank profiles. In certain exemplary embodiments, autonomous machine databases 4785 can comprise a plurality of digging procedures usable by machine 4100. The plurality of digging procedures can be modified according to adaptive learning as mining procedures are performed and results measured.
Autonomous machine routines 4795 can comprise routines to select, optimize, and/or modify procedures associated with operating machine 4100. Autonomous machine routines 4795 can comprise any of autonomous machine routines 2785 discussed in relation to
Network 4600 can be communicatively coupled to an information device 4800, which can comprise a report processor 4825, an input processor 4850, a client program 4860, and a user interface 4880. Information device 4800 can be utilized by a user to monitor and/or control machine 4100 from a remote location. In certain exemplary embodiments, information device 4800 can obtain information from machine 4100 and/or server 4700 in order to monitor and/or control machine 4100.
Sensor data can comprise a location of the mining haulage vehicle relative to the electric mining shovel. Sensor data can comprise a GPS signal related to the machine or from a mining haulage vehicle, the GPS signal can be indicative of the location of the machine, a mining vehicle, and/or the mining haulage vehicle. Sensor data can comprise information related to an interference such as an interference detected by a proximity detector.
At activity 5200, a bank profile can be identified. In certain exemplary embodiments, a predetermined bank profile can be identified from a plurality of predetermined bank profiles. The identified predetermined bank profile can be a closest match of the plurality of predetermined bank profiles to the profile of the digging surface.
At activity 5300, a first digging procedure can be determined. The first digging procedure can be based upon the identified predetermined bank profile. The first digging procedure can be determined responsive to instructions regarding material removal. For example, instructions can be received regarding a digging surface and/or characteristics, such as a boundary, of a pocket of material to be removed by the machine. For example, a management entity might establish a boundary for a pocket of material to be excavated based upon an ore grade being too low.
Different situations can make alternate procedures more desirable. For example, the first digging procedure might be different for removing a pocket of earthen material adjacent to a cliff as compared to an area not adjacent to a cliff. As another example, a digging procedure for earthen material with a largest particle size of six inches might be different than a digging procedure for earthen material with a largest particle size of sixty inches. The first digging procedure can comprise a procedure for loading a haulage vehicle by the machine.
At activity 5400, a second digging procedure can be determined. The second digging procedure can be determined by executing an optimization routine, a portion of which can heuristically or randomly vary a value of one or more parameters associated with the first digging procedure. The optimization routine can use any of a plurality of response surface or expert system derived algorithms to seek an optimal procedure for digging material. Then, the optimization procedure can utilize and/or invoke a modeling procedure to predict results and/or performance of the first digging procedure and/or the second digging procedure. The optimization routine can determine and/or select a preferred procedure by comparing the modeled results and/or performance of the first digging procedure to those of the second digging procedure.
In certain exemplary embodiments, the optimization routine can automatically detect an interference with an object. The optimization routine can comprise a power optimization routine, which can determine a procedure for efficiently loading a haulage vehicle.
At activity 5500, the preferred procedure can be transferred to the machine for execution. In certain exemplary embodiments, the preferred procedure can be determined locally at the machine such that the transfer takes place within the machine. In certain exemplary embodiments, the procedure can be transmitted from an information device to the machine.
At activity 5600, the preferred procedure can be executed at the machine. The executed procedure can comprise loading a haulage vehicle based upon the preferred procedure. If a location of a haulage vehicle is determined to be undesired, certain exemplary embodiments can transmit instructions adapted to automatically relocate the haulage vehicle to a desired location.
In certain exemplary embodiments, if a determination is made that a value of a parameter related to control of the machine is invalid, instructions can be provided to an operator to manually control the machine. Manual control of the machine can continue until a cause of the invalid value of the parameter is isolated and/or corrected.
Executing the procedure can comprise automatically relocating the machine responsive to procedural instructions to do so. In certain exemplary embodiments, executing the procedure can comprise automatically relocating the machine responsive to detection of an interference of the machine with an object. Automatic relocation of the machine can comprise managing an electrical cable coupled to the machine.
Executing the procedure can comprise detecting a fault with the machine. In certain exemplary embodiments, the detected fault can be automatically repaired. For example, a faulty component can be bypassed utilizing an available spare component. In certain exemplary embodiments, a signal can be transmitted to a help entity responsive to the detected fault in the machine. In certain exemplary embodiments, a maintenance activity can be scheduled for the machine responsive to a detected event. The detected event can be the fault, a measured degradation in machine performance, a measured period of time since a last scheduled maintenance, a detected temperature, a detected vibration, and/or a detected pressure, etc.
At activity 5700, performance data can be collected relating to execution of the preferred procedure. Sensors can record activities of the procedure and results from the execution of the procedure. The results can be compared to predictions and/or results from previous procedures.
At activity 5800, procedures can be modified. Procedure results can provide an indication of improvement or a lack of improvement as a result of a procedural change. If improvements are noted, procedural rules can be modified to incorporate a beneficial change. If no improvement is noted or performance degrades, procedures and/or rules used to generate procedures can be modified to avoid repeating procedural steps leading to the unimproved results.
At activity 5900 data can be exported. Data can be communicated via wired and/or wireless transmissions from the machine to at least one information device. Exported data can be analyzed by users and/or information devices to further understand and improve operating procedures and/or performance of the machine.
In certain exemplary embodiments, via one or more user interfaces 6600, such as a graphical user interface, a user can view a rendering of information related to a machine which is adapted to dig. For example, user interface 6600 can be adapted to display information comparing productivity of an autonomous machine to manually operated machines and/or industry standards, display an algorithm for autonomous operation of the machine, display information relating to invalid parameter values resulting in manual or partially manual control of the machine, and/or video displays related to the operation and/or environment of the machine, etc.
System 7000 can comprise a video sensor 7400, which can communicate with processor 7300 directly and/or via communication tower 7200. Video sensor 7400 can provide digging profile information regarding an earthen surface adapted for digging by machine 7100. Video sensor 7400 can be adapted to provide images related to machine 7100 from a variety of perspectives and for a variety of purposes. For example, video sensor 7400 can provide a perspective view of a mine for a human or machine based entity to review overall mine operations and/or performance. Video sensor 7400 can be mounted on a haulage vehicle associated with machine 7100 in order to view a loading of material on the haulage vehicle. Video sensor 7400 can be locally mounted on machine 7100 in order to provide a view of a particular part of machine 7100 or a digging surface associated with machine 7100. Information collected by video sensor 7400 can be displayed via a video feed interface 7600. Information collected by video sensor 7400 can be automatically analyzed by a pattern recognition algorithm for analytic purposes.
Information related to autonomous or semi-autonomous control of machine 7100 can be viewed via a control screen 7500. Responsive to an invalid value detected by machine 7100 an operator can assume full or partial control of machine 7100 via confusion mode controls 7700. The operator can control machine 7100 either locally or remotely.
If the shovel is in the proper position, activity 8300 can be executed. At activity 8300, a digging plan can be formulated by an information device. At activity, 8400 the digging plan can be executed. At activity 8500, a determination can be made whether the digging plan is finished. If the digging plan has not been completed, activity 8400 can be repeated. If the digging plan is finished, activity 8600 can take place. At activity 8600, a new digging plan can be requested by the machine.
If the shovel is not in the proper position at activity 8200, activity 8700 can take place. At activity 8700, the machine can be propelled to a proper position. At activity 8800 a scan of a digging surface can be made.
At activity 10300, an angle can be calculated. The angle can provide information relating to when the machine should apply a brake to slow and/or stop a swinging motion to place a dipper associated with the machine in a position above a haulage cavity of the haulage vehicle. An optimum dipper height can be calculated for proper positioning of the dipper.
At activity 10400, the dipper can be raised to a preset height. At activity 10500, a motor controller can be instructed to swing the dipper to a braking point. At activity 10700, the brake can be applied to cause the dipper to swing to coordinates indicative of the haulage cavity of the haulage vehicle. At activity 10600, a bank scan can be executed. At activity 10800, a “fingerprint pattern” can be determined regarding the bank scan. The “fingerprint pattern” can be a characterization of the bank scan. At activity 10900, library match can be made wherein an identified profile can be found that is a closest match of the profile determined from the bank scan to a plurality of predetermined profiles.
If a match is found at activity 12200, at activity 12400, a flag can be set for a general dig profile. At activity 12500, dig parameters can be loaded based on the identified predetermined bank profile. Dig parameters can form a digging procedure. For example, if the haulage vehicle is not able to hold a full dipper load of material, a digging procedure can utilize a faster partial load cycle to fill the haulage vehicle. At activity 12600, dig modification parameters can be loaded based upon the dig plan. Control then can pass to method 13000 of
At activity 15300, an angle to begin a confirmation scan can be calculated. At activity 15500, a confirmation scan can be executed. The confirmation scan can comprise a profile of a digging surface. At activity 15800, a “fingerprint confirmation” scan can be made. The “fingerprint confirmation” scan can be made to confirm a validity of a digging profile and/or a digging procedure. At activity 15900, a determination can be made regarding whether a scan has been confirmed. If the scan has been confirmed, method 15000 can end. If the scan is not confirmed, control can be passed to method 16000 of
If the deviation at activity 18500 is not sufficiently large, control can return to activity 18200. If there was no Simodig correction at activity 18100, at activity 18200, a try counter can be incremented. At activity 18300, a profile confidence counter can be incremented.
Still other embodiments will become readily apparent to those skilled in this art from reading the above-recited detailed description and drawings of certain exemplary embodiments. It should be understood that numerous variations, modifications, and additional embodiments are possible, and accordingly, all such variations, modifications, and embodiments are to be regarded as being within the spirit and scope of this application. For example, regardless of the content of any portion (e.g., title, field, background, summary, abstract, drawing figure, etc.) of this application, unless clearly specified to the contrary, such as via an explicit definition, there is no requirement for the inclusion in any claim herein (or of any claim of any application claiming priority hereto) of any particular described or illustrated characteristic, function, activity, or element, any particular sequence of activities, or any particular interrelationship of elements. Moreover, any activity can be repeated, any activity can be performed by multiple entities, and/or any element can be duplicated. Further, any activity or element can be excluded, the sequence of activities can vary, and/or the interrelationship of elements can vary. Accordingly, the descriptions and drawings are to be regarded as illustrative in nature, and not as restrictive. Moreover, when any number or range is described herein, unless clearly stated otherwise, that number or range is approximate. When any range is described herein, unless clearly stated otherwise, that range includes all values therein and all subranges therein. Any information in any material (e.g., a United States patent, United States patent application, book, article, etc.) that has been incorporated by reference herein, is only incorporated by reference to the extent that no conflict exists between such information and the other statements and drawings set forth herein. In the event of such conflict, including a conflict that would render invalid any claim herein or seeking priority hereto, then any such conflicting information in such incorporated by reference material is specifically not incorporated by reference herein.
This application claims priority to, and incorporates by reference herein in its entirety, U.S. Provisional Patent Application Ser. No. 60/606,570, filed 1 Sep. 2004.
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