利用人工神经网络提高能源效率的新应用

Oguzhan Oktay Buyuk, Sevgi Nur Bilgin
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引用次数: 1

摘要

本文介绍了一种利用无监督学习、自学习映射机制来恢复电力损耗的新系统应用。事实上,能源及其传输正在成为经济和环境的重要问题。考虑到我们世界上的许多设备都是用电运行的,现在重要的是要跟上我们如何通过减少损耗和泄漏来获得电力传输的最大能源效率。一种新的系统应用和模块方法可以与输电线路通信,以定义和跟踪能量损失。在本研究中,我们研究了系统如何使用无监督学习来找到要遵循的最佳传输路径。该应用程序旨在与智能电网上的输电线路互连。该系统对路由正确计划中发生的二氧化碳排放也有关键的恢复,通知集成,可以自行准备报告给网络节点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel application to increase energy efficiency using artificial neural networks
In this paper, a novel system application to recover electricity losses using an unsupervised learning, self-learning mapping mechanism is introduced. Actually, energy and its transmission are becoming a vital issue for both the economy and the environment. Considering many devices in our world run on electricity, it is now important to keep up with how we can obtain maximum energy efficiency in electricity transmission by reducing losses and leakage. A new system application and module approach can communicate with electricity transmission lines to define and track energy losses. In this study, we examine how the system uses unsupervised learning to find the best transmission path to follow. This application is designed to interconnect with electricity transmission line on smart grids. This system also has critical recovering on CO2 emissions occurring on routing correct plan, notification integration which may prepare a report to the network nodes by itself.
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