家庭能源监测系统在电费预测中的应用

Charnon Chupong, B. Plangklang
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引用次数: 12

摘要

家庭能源监测系统在家庭能源管理中占有重要地位。许多报告表明,它对减少家庭能源消耗有效果。但在中长期使用的家庭能源监控系统中,也有一些报告显示,由于用户不再重视,节能效果迅速消失。为了改进传统的家庭能源监测系统,应该将三个概念应用到系统中,1)系统必须是一个学习工具,而不仅仅是一个监测工具,2)系统应该为个人用户量身定制,3)用户应该使用更少的精力来处理系统。本文将这些概念应用到家庭能源监测系统中,并创建了一个预测用户电费的应用程序。系统具有应用程序编程接口(API),允许用户根据自己的需求创建应用程序。通过API,我们创建了一个应用程序来预测用户的电费,每天通过电子邮件报告给用户,用户可以减少接收和翻译信息的工作量。从每日报告中,用户可以了解他们的行为或措施如何影响电费。通过对电费预测成本与实际成本的比较,对电费预测应用的准确性进行了测试,准确率达96%,是可以接受的。
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Electricity bill forecasting application by home energy monitoring system
Home energy monitoring system has importance rule in home energy management. Many reports show that it has effectiveness for reducing energy consumption in home. But in medium term and long term of using home energy monitoring system there are some report show the rapidly dismiss of energy saving effective because of user do not pay attention anymore. For improve the traditional home energy monitoring system there are three concepts should be applied to the systems, 1) the system must be a learning tool not just a monitoring tool, 2) the system should be tailored made for individual users and 3) users should use less effort to dealing with the system. This article applied these concepts to home energy monitoring system and create an application to forecasting the user's electricity bill. The system has applications programming interface (API) that allow users to create applications upon their requirements. From API we have create an application to forecasting the user's electricity bill that report to user via email daily, user have less effort to receive and translate the information. And from that daily report user can learn of how their behaviors or their measures effect the electricity cost. The accuracy of electricity bill forecasting application was tested by comparing the forecast cost and actual cost and found 96% of accuracy, the result is highly acceptable.
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