使用机器学习算法的智能家居太阳能消耗推荐和预测

Anish Dhage, Apoorv Kakade, Gautam Nahar, Mayuresh Pingale, S. Sonawane, Archana Ghotkar
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引用次数: 2

摘要

太阳能是可再生能源发电的主要来源。太阳强度与太阳能发电量成正比,并且高度依赖于天气。提出了一个模型,该模型使用各种机器学习技术(如梯度增强、支持向量机等)实现的天气信息来预测太阳辐射量。研究结果使我们能够为智能家居制定有效的能源消耗计划,并有效利用太阳能,这可能会带来一些经济效益。此外,准确的预测将使用户更有准备根据需要在传统能源和可再生能源之间切换。与各种机器学习模型进行比较研究,以确定构建预测模型的最佳方法。构建模型的基础可以部署到不同的地区,这些模型将结合地理位置的天气数据,并输出该地区准确的太阳强度预测。在此基础上,提出了预测能耗的推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recommendation and Prediction of Solar energy consumption for smart homes using machine learning algorithms
Solar Energy is a principal source of renewable energy generation. Solar intensity is directly proportionate to solar power generation and it is highly reliant on the weather. A model is proposed that predicts the amounts of solar radiation produced using weather information implemented using various machine learning techniques such as Gradient boosting, SVM, etc. The results allow us to make effective energy consumption plans for smart homes with efficient utilization of solar energy which may provide several economic benefits. Additionally, accurate forecasts would make users more prepared to switch between conventional and renewable sources as required. A comparison study is performed with various machine learning models to determine the best method for building a prediction model. The groundwork for constructing models that could be dispatched to various regions is laid out that will incorporate that geographic location’s weather data, and output accurate solar intensity predictions for that area. Furthermore, a recommendation system is proposed for the consumption of thus predicted energy.
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