Application of machine learning for infrastructure reconstruction programs management
- URL: http://arxiv.org/abs/2511.20916v1
- Date: Tue, 25 Nov 2025 23:14:36 GMT
- Title: Application of machine learning for infrastructure reconstruction programs management
- Authors: Illia Khudiakov, Vladyslav Pliuhin, Sergiy Plankovskyy, Yevgen Tsegelnyk,
- Abstract summary: This article describes an adaptive decision-making support model aimed at improving efficiency of engineering infrastructure reconstruction program management.<n>The main components of the model are defined, which include a set of decision-maker preferences, decision-making tasks, sets of input data, and applied software components.<n>The application of the developed adaptive model is possible in the management of programs for the reconstruction of such engineering systems as systems of heat, gas, electricity supply, water supply, and drainage, etc.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The purpose of this article is to describe an adaptive decision-making support model aimed at improving the efficiency of engineering infrastructure reconstruction program management in the context of developing the architecture and work breakdown structure of programs. As part of the study, the existing adaptive program management tools are analyzed, the use of infrastructure systems modelling tools is justified for program architecture and WBS creation. Existing models and modelling methods are viewed, and machine learning and artificial neural networks are selected for the model. The main components of the model are defined, which include a set of decision-maker preferences, decision-making tasks, sets of input data, and applied software components of the model. To support decision-making, the adaptive model applies the method of system modeling and predicting the value of the objective function at a given system configuration. Prediction is done using machine learning methods based on a dataset consisting of historical data related to existing engineering systems. The work describes the components of the redistribution of varied model parameters, which modify the model dataset based on the selected object type, which allows adapting the decision-making process to the existing program implementation goals. The functional composition done in Microsoft Azure Machine Learning Studio is described. The neural network parameters and evaluation results are given. The application of the developed adaptive model is possible in the management of programs for the reconstruction of such engineering systems as systems of heat, gas, electricity supply, water supply, and drainage, etc.
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