The present invention is related to the field of wireless communication. More specifically, the present invention relates to methods of configuring communication routes between wireless devices.
Wireless communication systems make use of routing protocols to move information from a first device to a second device. For such systems, there are often one or more base stations (various terms are used, including root node or gateway) that connect the wireless communication system to a second communication system. One example is an access point acting as the intermediary between a wireless system and a wired system. The other devices in the wireless system must determine how to route data to reach the base node.
Because the reliable transmission range of a device may not include the base node, routing strategies will often make use of intermediate devices. For example, as shown in
The present invention, in an illustrative embodiment, comprises a method of analyzing performance of a wireless communication system, the wireless communication system including a base station and a number of node devices, the method comprising observing link characteristics of device pairs in the system, generating a centralized communication solution using the link characteristics, calculating a first quality metric using the centralized communication solution, observing an actual communication configuration for the node devices and generating a second quality metric, and comparing the first quality metric to the second quality metric.
In another embodiment, the centralized communication solution is characterized in that, for each node device, first and second (or more) non-overlapping communication routes to the base station are defined. For another illustrative embodiment, the actual communication configuration also defines first and second (or more) non-overlapping communication routes to the base station for each node device, at least some defined communication routes including intermediate nodes between the node device and the base station. The first and second quality metrics may include a component related to a sum of latencies introduced by each intermediate node in at least some defined communication routes.
In yet another embodiment, the first and second quality metrics include a component related to a number of hops between a first node device and the base station. Also, the first and second quality metrics may include a component related to the link quality of a link used in a route defined between a first node device and the base station. In another illustrative embodiment, the centralized communication solution and the actual communication configuration define communication routes having intermediate nodes through which communications pass between a first node device and the base station, wherein the first and second quality metrics include a component related to the number of overlapping routes occurring at an intermediate node. The method may also include, if the step of comparing indicates system inefficiency beyond a predefined level, reconfiguring the system.
Another illustrative embodiment includes a wireless communication system comprising at least one base station and a number of node devices configured for wireless communication with one another, wherein at least one analyzing device in or communicatively coupled to the system is configured to gather data related to actual communication routes defined in the system and observe an actual quality metric of the system communication status, and wherein the analyzing device is further configured to generate a mathematically optimum quality metric for comparison to the actual quality metric.
In another embodiment, for each node device, first and second non-overlapping communication routes to the base station are defined when the mathematically optimum quality metric is generated. In yet another embodiment, the actual communication configuration defines first and second non-overlapping communication routes to the base station for each node device, at least some defined communication routes including intermediate nodes between the node device and the base station. Also, the actual and optimum quality metrics may include a component related to a sum of latencies introduced by each intermediate node in at least some defined communication routes.
In another embodiment, the actual and optimum quality metrics include a component related to a number of hops between a first node device and the base station. In yet another illustrative embodiment, the actual and optimum quality metrics include a component related to the link quality of a link used in a route defined between a first node device and the base station. Also, a number of optimal communication routes may be defined when the mathematically optimal metric is generated, at least one optimal communication route having an intermediate node conveying data from a first node to the base station, at least one actual communication route may include an intermediate node, and, the actual and optimum quality metrics may include a component related to the number of overlapping routes occurring at an intermediate node. In yet another embodiment, the system is configured to have a first routing protocol for routing data through the system to a base station, and, if a comparison of the mathematically optimum metric to the actual metric indicates system inefficiency beyond a predetermined level, a new routing protocol is generated to replace the first routing protocol.
In an illustrative embodiment, the present invention includes a wireless communication system comprising at least one base station, a number of infrastructure node devices configured for wireless communication with one another, and a number of leaf devices that communicate with the infrastructure node devices; wherein at least one analyzing device in or communicatively coupled to the system is configured to gather data related to actual communication routes defined in the system and observe an actual quality metric of the system communication status, and wherein the analyzing device is further configured to generate a mathematically optimum quality metric for comparison to the actual quality metric.
In yet another embodiment, the leaf devices comprise sensors having a sleep mode and an active mode, the sensors adapted to awaken at scheduled times and transmit data to infrastructure node devices, each sensor being associated with at least two infrastructure node devices. In another illustrative embodiment, the system is configured such that first and second non-overlapping routes are defined from each leaf node to a base station. Also, the system may be configured to have a first routing protocol for routing data through the system to a base station, and, if a comparison of the mathematically optimum metric to the actual metric indicates system inefficiency beyond a predetermined level, a new routing protocol may be generated to replace the first routing protocol.
The following detailed description should be read with reference to the drawings. The drawings, which are not necessarily to scale, depict illustrative embodiments and are not intended to limit the scope of the invention.
In an illustrative embodiment, the present invention is directed to a wireless network having a number of devices. Poor data routing can increase the response time of such networks, and makes such networks vulnerable to over-reliance on a limited number of devices. For example, if data is routed heavily through one or two nodes, then these nodes form a bottleneck for flow of information from source nodes to the base station leading to delays. Furthermore, failure of those heavily used nodes can lead to heavy data losses.
Design and selection of data routing within such networks is rendered complicated due to their distributed nature, even when the data routing takes place within a network having a number of static (non-moving) devices. At any given time, one or more devices that are a part of the network may, for whatever reason, be out of communication with the rest of the network. For example, a flurry of local noise can block communication with a device, or a device may periodically enter a low power sleep mode. Further, it is often desirable to have a network enabled for adding devices after initial setup.
One result of these various difficulties is that centralized configuration of data routing is rendered laborious. For example, a centralized configuration may require updating when a device is permanently or temporarily added or removed. Updating a centralized configuration may require contacting each device in the network separately. These difficulties make decentralized configuration a desirable feature during ongoing operation. However, it has been found in simulation that decentralized configuration often fails to produce results that are as optimal as centralized configuration. The present invention, in an illustrative embodiment, is directed at improving wireless communication system configurations by aiding in the assessment of operating configurations.
Also shown are additional routes to create redundancy from node I5 to B. A first route follows route 1 and is denoted route 3, and another route for I5 follows route 4, through nodes I4 and I2. Likewise for node I6, route 5 follows part of route 2, and route 6 goes through nodes I3 and I1. As can be seen, even with relatively few nodes or devices, the number of paths grows quickly, especially when non-overlapping redundant paths are desired. In some embodiments, device X is a device operating in similar fashion to the other node devices I1 . . . I6. In other embodiments, for example as further illustrated below in
Decentralized configuration to add K may take place as follows. K generates a routing request RREQ, followed by its own address, K, making message “RREQK”. When nearby devices L, P receive the routing request from K, each will retransmit the message, after including its own address in the message. Other information, for example, RSSI data (received signal strength indicator), other link quality data, or node latency data (in the illustrative embodiment, the node latency is proportional to the number of routes serviced by the node) may also be added. Node latency data may take any suitable form. In another example, node latency data may be generated by having several or each node maintain statistics on the residence time of data (or packets of data) at that node. In a further example, the latency value for each node may be the mean residence time, or statistics related to the set or distribution of residence times as the latency value. To accommodate for intermittent communication failures that may occur, for example, where a device is not always “ON” (i.e. occasionally enters sleep mode), the gathered data may include indicators of communication link failures and the frequency of such failures.
The message is then repeated until the RREQ reaches the destination, in this case, the base station BS. As shown, the base station may receive more than one RREQ from K—in this case, RREQNMLK passes through nodes L, M, and N after it is generated by K and before it is received at BS. Likewise, RREQSRQPK passes through nodes P, Q, R, and S after it is generated and before it is received at BS. The base station BS will then sort through the messages and select the apparently best route. Typically, the “best” route will be determined as the one having the best link strength and fewest number of hops. Other factors that may be considered in having the base station select the best route include the “load” of any of the intermediate nodes between K and BS. For example, a route including a high load intermediate node (a node that already forms a part of a large number of other existing routes) may be deselected to avoid data collisions at the high load node.
After BS selects the optimal route (or two or more best optimal routes, in some embodiments), a message is generated by BS and addressed to K for the purpose of indicating, to K, what route(s) should be used. In some embodiments, the base station BS is enabled for broadcasting to all other nodes, such that the message can be sent by BS directly to K. In other embodiments, BS may route the message to K using intermediate devices. The decentralized configuration can typically be performed without significantly interfering with communications within the network. However, because devices such as device K can be added, activated, reactivated, or otherwise configured in a random order, the decentralized configuration routine often achieves a result that diverges from an optimum possible configuration. However, repeated reconfiguration using a centralized configuration routine becomes complex and therefore can be costly in terms of computational needs and downtime for updating configurations. Therefore the present invention provides a benchmark for determining how far from optimal an actual configuration is, to determine whether reconfiguration or other remedy is in order.
It can be seen in
In an illustrative embodiment, the optimal solution is generated by a process of a mixed integer linear program. First, two redundant, non-overlapping paths are defined for each node, as illustrated above in
+α1*{Sum of the number of hops over the two redundant paths of each node to base};
−α2*{Sum of the logarithms of the link quality of each link over all links in the two paths for each node};
+α3*{Maximum Load serviced by any node in the network};
+α4*{Sum of the latencies introduced by each intermediate node in a path, over the two paths of each node}.
For the illustrative embodiment, the latency introduced by an intermediate node may be proportional to the number of routes serviced by the node. Node latency may also be calculated using additional metrics including the residence time of data at a particular node, for example, by calculating a mean residence time or statistics related to a number of residence times for data passing through a particular node at various times. The variables α1 . . . α4 can be set by a user depending on which of the identified factors is considered most important. If desired, rather than the four values noted above, other system variables may be used. For example, rather than using the maximum load satisfied by any node in the network, the statistical variance of node loads may by used. Similarly, the statistical mean of the distribution of the queuing delays (or residence times) of a packet at a node may be used for latency measures.
In the illustrative embodiment, the above set of factors, including the α variables, are then used to generate a first quality metric, as shown in
In an illustrative embodiment, physical information related to the infrastructure nodes are characterized in terms of their physical characteristics, including relative juxtaposition and link strength between nodes. A graph is defined G (V, E) in which the vertex set is the set of all nodes, including the base station. The edges of the graph are directed edges that denote communication connectivity between vertices. For example, if there is a directed edge between a vertex A and a vertex B, then there is communication possible from A to B. Then the two (or more) best non-overlapping paths to the base station are chosen. By using a graphical analysis taking into consideration the factors noted above, an optimal solution may be approached.
In some embodiments, less than all of the above noted factors are considered for the minimization process. Alternatively, one or more of α1 . . . α4 may be set to zero such that one or more factors are eliminated.
Using the above formula and a wireless network simulator, various trials were performed. It was found that a decentralized approach, when used in the wireless network simulator, was not as good as an approach using a centralized approach to designing the global system. For example, taking into account only the first factor (number of hops), a centralized approach is typically in the range of 7-10% better (i.e. 7-10% less hops) than a decentralized approach. However, as noted above, complete reliance on a centralized approach may create other difficulties limiting its utility.
Within the context of the present invention, a centralized approach to routing can be considered an optimized approach. Because there are several factors involved in creating the “optimum” approach, it should be understood that there is, in reality, rarely a single “ioptimal” routing approach. There are, instead, optimized communication solutions which may be optimized in terms of one or more factors determining communication quality. A centralized solution is one category of optimized solutions. Within the set of centralized solutions are solutions optimized for various factors. The illustrative embodiments herein provide examples including optimized communication solutions that may be centralized solutions optimized to reduce the number of communications hops used, the system latency, and/or the maximum load satisfied by any node in the system, and/or maximizing link quality within a network.
In one embodiment, at least some of the sensors operate in low power modes. For example, a given sensor may have an active mode and a low power sleep mode, wherein the sensor periodically wakes from low power sleep to transmit data using the active mode. While in low power sleep, the sensor is unavailable for communications. At a scheduled time, the sensor may awaken, and transmits whatever data it has gathered for transmission to an associated infrastructure node. Next, the infrastructure node transmits the sensor data to the base station.
For the purposes of redundancy, a sensor may transmit to two infrastructure nodes. For example, several sensors 114, 116, 118 are shown associated with each of infrastructure nodes 104, 106. In some embodiments, the system is configured such that routes for signals from these sensors 114, 116, 118 which pass through the infrastructure nodes 104, 106 are non-overlapping. For example, a signal from a first sensor 114 may be routed to infrastructure nodes 104 and 110, and then to the base node 100, and also to infrastructure nodes 106 and, and then to the base node 100. Meanwhile a signal from a second sensor 116 may have the same pair of routes. It can be seen from the system shown that node 102 is likely to be used for a number of sensor transmissions. To reduce the overall latency of the system, some data that could be routed through node 102 may be routed around node 102 to reduce the likelihood of data collisions. Thus, data from a sensor such as sensor 118 may be routed to infrastructure nodes 104 and 110, and then to the base node 100, as well as around node 102 by passing to nodes 106, 108, and 112 before going to the base node 100.
To highlight one of the difficulties that can arise with a decentralized approach to routing, suppose a sensor 120 is added to the system. As can be seen, sensor 120 is placed such that association with nodes 102 and 108 is desirable. Sensor 120 may be close enough for communication with node 106 as well, but is clearly closer to node 102. However, if sensor 120 is the newest sensor added to the system, then node 102 may already be carrying the heaviest routing load of the system. If node 102 is already at its capacity for routing load (such capacity can be predefined for the system), then node 102 would be unavailable for routing signals from sensor 120. This would require sensor 120 to associate with nodes 106 and 108, and would force signals passing from sensor 120 to node 106 to be retransmitted to nodes 104 and 110 before reaching the base node 100. The result is inefficient. However, reconfiguring the entire routing table every time a new sensor is added, every time a sensor is removed, every time a sensor loses communication with its associated infrastructure nodes, and every time a sensor that has lost communication regains communication, as well as other times when infrastructure nodes are added and removed, or lose and regain communication, would likely create a cacophony of routing configuration signals. Therefore, with the present invention, optimal versus actual performance can be compared and measured.
When actual performance falls below a desired threshold, then the system can be reconfigured in either a centralized or decentralized manner. For example, if metrics are generated as explained above with reference to
Any of the devices in the system may be programmed to perform analysis related to the present invention. Alternatively, a separate device may be communicatively coupled to the system for performing such analysis. If desired, a base station may gather system performance data and transmit the data to another device that is not part of the system (for example, a device accessible using a wired network accessible by the base station). Because an optimized solution may require extra computing capacity, the ability to transmit performance data may aid in allowing system analysis to occur even while the system is operating.
Those skilled in the art will recognize that the present invention may be manifested in a variety of forms other than the specific embodiments described and contemplated herein. Accordingly, departures in form and detail may be made without departing from the scope and spirit of the present invention as described in the appended claims.
Number | Name | Date | Kind |
---|---|---|---|
3643183 | Geffe | Feb 1972 | A |
3715693 | Fletcher et al. | Feb 1973 | A |
3758885 | Voorman et al. | Sep 1973 | A |
4264874 | Young | Apr 1981 | A |
4529947 | Biard et al. | Jul 1985 | A |
4614945 | Brunius et al. | Sep 1986 | A |
4812785 | Pauker | Mar 1989 | A |
4843638 | Walters | Jun 1989 | A |
5392003 | Nag et al. | Feb 1995 | A |
5428602 | Kemppainen | Jun 1995 | A |
5428637 | Oliva, Jr. et al. | Jun 1995 | A |
5430409 | Buck et al. | Jul 1995 | A |
5438329 | Gastouniotis et al. | Aug 1995 | A |
5451898 | Johnson | Sep 1995 | A |
5481259 | Bane | Jan 1996 | A |
5642071 | Sevenhans et al. | Jun 1997 | A |
5659303 | Adair, Jr. | Aug 1997 | A |
5726603 | Chawla et al. | Mar 1998 | A |
5767664 | Price | Jun 1998 | A |
5809013 | Kackman | Sep 1998 | A |
5847623 | Hadjichristos | Dec 1998 | A |
5963650 | Simionescu et al. | Oct 1999 | A |
5987011 | Toh | Nov 1999 | A |
6026303 | Minamisawa | Feb 2000 | A |
6052600 | Fette et al. | Apr 2000 | A |
6058137 | Partyka | May 2000 | A |
6091715 | Vucetic et al. | Jul 2000 | A |
6175860 | Gaucher | Jan 2001 | B1 |
6236642 | Shaffer et al. | May 2001 | B1 |
6353846 | Fleeson | Mar 2002 | B1 |
6366622 | Brown et al. | Apr 2002 | B1 |
6401129 | Lenander | Jun 2002 | B1 |
6414955 | Clare et al. | Jul 2002 | B1 |
6414963 | Gemar | Jul 2002 | B1 |
6624750 | Marman et al. | Sep 2003 | B1 |
6768901 | Osborn et al. | Jul 2004 | B1 |
6785255 | Sastri et al. | Aug 2004 | B2 |
6823181 | Kohno et al. | Nov 2004 | B1 |
6836506 | Anderson | Dec 2004 | B2 |
6901066 | Helgeson | May 2005 | B1 |
6944121 | Weste et al. | Sep 2005 | B1 |
7020501 | Elliott et al. | Mar 2006 | B1 |
7072304 | Ng et al. | Jul 2006 | B2 |
7164651 | Weste et al. | Jan 2007 | B2 |
7242294 | Warrior et al. | Jul 2007 | B2 |
7522537 | Joshi | Apr 2009 | B2 |
20020011923 | Cunningham et al. | Jan 2002 | A1 |
20020071413 | Choi | Jun 2002 | A1 |
20020085622 | Dhar et al. | Jul 2002 | A1 |
20020141479 | Garcia-Luna-Aceves et al. | Oct 2002 | A1 |
20030002446 | Komaili et al. | Jan 2003 | A1 |
20030053555 | McCorkle et al. | Mar 2003 | A1 |
20030063585 | Younis et al. | Apr 2003 | A1 |
20030151513 | Herrmann et al. | Aug 2003 | A1 |
20030198280 | Wang et al. | Oct 2003 | A1 |
20040028023 | Mandhyan et al. | Feb 2004 | A1 |
20040029553 | Cain | Feb 2004 | A1 |
20040157557 | Barnett et al. | Aug 2004 | A1 |
20040230638 | Balachandran et al. | Nov 2004 | A1 |
20040233882 | Park et al. | Nov 2004 | A1 |
20040253996 | Chen et al. | Dec 2004 | A1 |
20040264466 | Huang | Dec 2004 | A1 |
20050041591 | Duggi et al. | Feb 2005 | A1 |
20050053007 | Bernhardt et al. | Mar 2005 | A1 |
20050054346 | Windham et al. | Mar 2005 | A1 |
20050157697 | Lee et al. | Jul 2005 | A1 |
20050157698 | Park et al. | Jul 2005 | A1 |
20050281215 | Budampati et al. | Dec 2005 | A1 |
20060104205 | Strutt et al. | May 2006 | A1 |
20060153089 | Silverman | Jul 2006 | A1 |
20070077927 | Zhao et al. | Apr 2007 | A1 |
Number | Date | Country |
---|---|---|
673184 | Feb 1990 | CH |
4344172 | Jun 1995 | DE |
0607562 | Jul 1994 | EP |
0893931 | Jan 1999 | EP |
WO 0070572 | Nov 2000 | WO |
Number | Date | Country | |
---|---|---|---|
20060171346 A1 | Aug 2006 | US |