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Energy Management in Smart Cities Based on Internet of Things: Peak Demand Reduction and Energy Savings

机译:基于物联网的智慧城市能源管理:减少高峰需求和节能

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摘要

Around the globe, innovation with integrating information and communication technologies (ICT) with physical infrastructure is a top priority for governments in pursuing smart, green living to improve energy efficiency, protect the environment, improve the quality of life, and bolster economy competitiveness. Cities today faces multifarious challenges, among which energy efficiency of homes and residential dwellings is a key requirement. Achieving it successfully with the help of intelligent sensors and contextual systems would help build smart cities of the future. In a Smart home environment Home Energy Management plays a critical role in finding a suitable and reliable solution to curtail the peak demand and achieve energy conservation. In this paper, a new method named as Home Energy Management as a Service (HEMaaS) is proposed which is based on neural network based Q-learning algorithm. Although several attempts have been made in the past to address similar problems, the models developed do not cater to maximize the user convenience and robustness of the system. In this paper, authors have proposed an advanced Neural Fitted Q-learning method which is self-learning and adaptive. The proposed method provides an agile, flexible and energy efficient decision making system for home energy management. A typical Canadian residential dwelling model has been used in this paper to test the proposed method. Based on analysis, it was found that the proposed method offers a fast and viable solution to reduce the demand and conserve energy during peak period. It also helps reducing the carbon footprint of residential dwellings. Once adopted, city blocks with significant residential dwellings can significantly reduce the total energy consumption by reducing or shifting their energy demand during peak period. This would definitely help local power distribution companies to optimize their resources and keep the tariff low due to curtailment of peak demand.
机译:在全球范围内,将信息和通信技术(ICT)与物理基础设施相集成的创新是政府追求智能绿色生活以提高能源效率,保护环境,改善生活质量并增强经济竞争力的首要任务。今天的城市面临着各种各样的挑战,其中,住宅和住宅的能源效率是关键要求。在智能传感器和上下文系统的帮助下成功实现这一目标将有助于建设未来的智慧城市。在智能家居环境中,家庭能源管理在寻找合适和可靠的解决方案以减少高峰需求并实现节能方面起着至关重要的作用。本文提出了一种基于神经网络的Q学习算法,称为家庭能源管理即服务(HEMaaS)的新方法。尽管过去已经进行了几次尝试来解决类似的问题,但是开发的模型并不能满足用户最大程度地提高系统的便利性和鲁棒性。在本文中,作者提出了一种自学习和自适应的高级神经拟合Q学习方法。所提出的方法为家庭能源管理提供了一种灵活,灵活且节能的决策系统。本文使用了典型的加拿大住宅模型来测试该方法。通过分析,发现所提出的方法提供了一种快速且可行的解决方案,以减少需求并在高峰时段节省能源。它还有助于减少住宅的碳足迹。一旦被采用,具有大量住宅的城市街区可以通过减少或转移高峰期的能源需求来显着降低总能源消耗。这肯定会帮助本地配电公司优化资源,并由于削减高峰需求而将电价保持在较低水平。

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