The paper presents a multi-objective optimization model and a novel evolutionary greedy (EG) algorithm to address the problem of optimal sensor placement for urban sewage surveillance.
The optimization model aims to maximize the sensing coverage while minimizing the expected search cost, with the number of sensors as a constraint. The EG algorithm combines the greedy approach with an evolutionary mechanism to efficiently solve the multi-objective problem, especially for large-scale sewage networks.
The effectiveness of the proposed model and algorithm is first evaluated on small-scale synthetic networks, demonstrating consistent efficiency improvements with reasonable optimization performance. The algorithm is then applied to a large-scale, real-world sewage network in Hong Kong, showing that it can generate optimal sensor placement plans to guide policy-making.
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by Sunyu Wang, ... في arxiv.org 09-26-2024
https://arxiv.org/pdf/2409.16770.pdfاستفسارات أعمق