Low Complexity Heuristics for Multi-Objective Sensor Placement in Traffic Networks.

Marina Sofokleous,Yiolanda Englezou, Aristotelis Savva,Stelios Timotheou,Christos G. Panayiotou

2023 IEEE 26th International Conference on Intelligent Transportation Systems (ITSC)(2023)

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摘要
Monitoring the traffic state of the road network is very important for a plethora of reasons, such as the prevention of traffic congestion and the development of estimation and control policies. In order to efficiently obtain high-quality information on traffic, the sensors must be installed at optimal locations in the road network under study. This problem is known as the Network Sensor Location Problem (NSLP). In this work, a multi-objective NSLP is proposed for the installation of a pre-defined number of sensors to maximise (i) the covered traffic flow volume and (ii) the minimum distance between candidate links for sensor installation, while taking into account pre-installed sensors. We reformulate the problem into a single-objective mixed-integer linear program (MILP) that yields the optimal sensor locations. In addition, we propose four low-complexity heuristics for the solution of the problem. The performance of the proposed algorithms is evaluated for the traffic network of the Republic of Cyprus under real-life conditions and traffic data. Results show that the four low-complexity approaches yield a different trade-off between execution speed and solution quality.
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关键词
Heuristic,Urban Network,Minimum Distance,Linear Programming,Road Network,Optimal Position,Traffic Flow,Sensor Locations,Solution Quality,Traffic Conditions,Traffic Volume,Traffic Data,Mixed Integer Linear Programming,Execution Speed,Sensor Installation,Optimization Problem,Objective Function,Multi-objective Optimization,Objective Value,Objective Function Value,Real-life Networks,Mixed-integer Programming,Maximum Flow,Commercial Solver,Public Works Department,Real Networks,Traffic Estimation,Solution Approach,Distance Threshold
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