Multi-Criteria Decision-Making for Energy Management in Smart Homes Using Hybridized Neuro-Fuzzy Approach

U. V. Anbazhagu, Manjula Sanjay Koti, V. Muthukumaran, V. Geetha, Meram Munrathnam
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Abstract

The necessity for smart energy oversight solutions has arisen in response to the rising popularity of energy-efficient home automation and other energy-saving technologies. Optimizing smart home energy use using multi-criteria decision-making (MCDM) is a proven methodology. However, the procedure for making decisions and MCDM’s capacity to handle various criteria are typically limiting factors. Hybrid methods, which integrate multiple decision-making approaches like Fuzzy Logic (FL) and Modular Neural Networks (MNN), could potentially be able to circumvent these restrictions and boost energy management systems’ efficacy and precision. This investigation presents a hybrid Neuro-Fuzzy (H-NF) method for MCDM in regulating energy for smart homes by combining FL with an MNN. The suggested approach would optimize energy use in smart homes by considering several parameters, notably cost, ease of use, and environmental effects. In addition, this study aims to examine how the H-NF model fares in comparison to other methods of making important decisions in terms of several performance metrics. The suggested hybridized approach has the potential to deliver more precise and effective decision-making processes for energy management in smart homes, allowing users to optimize their energy consumption while preserving comfort and lowering environmental impact.
基于混合神经模糊方法的智能家居能源管理多准则决策
随着节能家庭自动化和其他节能技术的日益普及,智能能源监管解决方案的必要性已经出现。使用多标准决策(MCDM)优化智能家居能源使用是一种经过验证的方法。然而,决策过程和MCDM处理各种标准的能力通常是限制因素。混合方法集成了模糊逻辑(FL)和模块化神经网络(MNN)等多种决策方法,有可能绕过这些限制,提高能源管理系统的效率和精度。本研究提出了一种混合神经模糊(H-NF)方法,通过将FL与MNN相结合,用于MCDM调节智能家居的能量。建议的方法将通过考虑几个参数来优化智能家居的能源使用,特别是成本、易用性和环境影响。此外,本研究旨在研究H-NF模型在几个性能指标方面与其他做出重要决策的方法相比如何。建议的混合方法有可能为智能家居的能源管理提供更精确和有效的决策过程,允许用户在保持舒适和降低环境影响的同时优化他们的能源消耗。
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