A combined work optimization technology under resource constraints with an application to road repair


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Abstract

We propose an approach for solving the task prioritization problem in road surface repair under bounded resources; the idea is to use a combination of defect recognition and classification methods based on statistical analysis and machine learning (random forests) with original methods for solving infinite-dimensional optimization problems (optical-geometric analogy). We show the results of a computational experiment that indicate high performance of the developed algorithms, and the resulting solutions were evaluated highly by experts in road facilities management. Our results may encourage more efficient use of resources to improve the quality of motorways.

About the authors

A. A. Lempert

Matrosov Institute for System Dynamics and Control Theory

Author for correspondence.
Email: lempert@icc.ru
Russian Federation, Irkutsk

D. N. Sidorov

Melentiev Energy Systems Institute; Irkutsk National Research Technical University

Email: lempert@icc.ru
Russian Federation, Irkutsk; Irkutsk

A. V. Zhukov

Irkutsk State University

Email: lempert@icc.ru
Russian Federation, Irkutsk

G. L. Nguyen

Irkutsk National Research Technical University

Email: lempert@icc.ru
Russian Federation, Irkutsk

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