A Study on the Thermal Prediction Model of the Heat Storage Tank for the Optimal Use of Renewable Energy

H. Oh, KyeongMin Jang, JeeYoung Oh, Myeongbae Lee, Jangwoo Park, Yongyun Cho, ChangSun Shin
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Abstract

Recently, energy consumption for heating costs, which is 35% of smart farm energy costs, has increased, requiring energy consumption efficiency, and the importance of new and renewable energy is increasing due to concerns about the realization of electricity bills. Renewable energy belongs to hydropower, wind, and solar power, of which solar energy is a power generation technology that converts it into electrical energy, and this technology has less impact on the environment and is simple to maintain. In this study, based on the greenhouse heat storage tank and heat pump data, the factors that affect the heat storage tank are selected and a heat storage tank supply temperature prediction model is developed. It is predicted using Long Short-Term Memory (LSTM), which is effective for time series data analysis and prediction, and XGBoost model, which is superior to other ensemble learning techniques. By predicting the temperature of the heat pump heat storage tank, energy consumption may be optimized and system operation may be optimized. In addition, we intend to link it to the smart farm energy integrated operation system, such as reducing heating and cooling costs and improving the energy independence of farmers due to the use of solar power. By managing the supply of waste heat energy through the platform and deriving the maximum heating load and energy values required for crop growth by season and time, an optimal energy management plan is derived based on this.
优化可再生能源利用的蓄热箱热预测模型研究
近来,占智能农场能源成本 35% 的供暖费能耗增加,要求提高能耗效率,由于担心电费的实现,新能源和可再生能源的重要性日益增加。可再生能源属于水能、风能、太阳能等,其中太阳能是一种将其转化为电能的发电技术,这种技术对环境影响较小,维护简单。本研究以温室蓄热箱和热泵数据为基础,选取影响蓄热箱的因素,建立了蓄热箱供热温度预测模型。该模型采用了对时间序列数据分析和预测非常有效的长短期记忆(LSTM)以及优于其他集合学习技术的 XGBoost 模型进行预测。通过预测热泵蓄热箱的温度,可以优化能源消耗和系统运行。此外,我们还打算将其与智能农场能源综合运营系统联系起来,例如降低供热和制冷成本,以及利用太阳能提高农民的能源独立性。通过该平台管理余热能源的供应,并按季节和时间推导出作物生长所需的最大供热负荷和能源值,在此基础上得出最佳能源管理计划。
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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