Markov Chain-based Algorithms for Building Occupancy Modeling: A Review

Chinmayi Kanthila, A. Boodi, K. Beddiar, Y. Amirat, Mohamed Benbouzid
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引用次数: 1

Abstract

Smart buildings focus on providing optimal comfort for the occupant with reduced energy consumption. Better occupant prediction and behavior analysis can significantly reduce building energy usage. Human being is an important parameter in the building control process and his comfort is paramount. Therefore, occupant modeling is critical in improving building efficiency while maintaining indoor comfort. Although, there are many different algorithms developed for occupancy modeling, Markov chain and its derivative models are extensively used because of their simplicity, flexibility, and prediction efficiency. In this context, this paper proposes a state of the art review focused on Markov chain and its derivative models for occupant modeling.
基于马尔可夫链的建筑占用建模算法综述
智能建筑专注于为居住者提供最佳的舒适度,同时降低能耗。更好的居住者预测和行为分析可以显著降低建筑能耗。人是建筑控制过程中的一个重要参数,人的舒适性是重中之重。因此,居住者建模对于提高建筑效率和保持室内舒适度至关重要。尽管有许多不同的算法被开发用于占用率建模,但马尔可夫链及其衍生模型因其简单、灵活和预测效率而被广泛使用。在此背景下,本文对乘员建模的马尔可夫链及其衍生模型进行了综述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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