首页> 外文会议>IEEE Annual India Conference >Electrical and Operational Anomaly Detection in Energy Intensive Manufacturing Industries
【24h】

Electrical and Operational Anomaly Detection in Energy Intensive Manufacturing Industries

机译:能源密集型制造业中的电气和运营异常检测

获取原文

摘要

Significant part of manufacturing sector in India lacks in transparency of energy flow and have a low awareness on energy efficiency measures. Manpower working in industries is mostly semi-skilled. Production output, its quality and cost are affected by energy wastage and device failure causing downtimes resulting from electrical faults and erroneuos operations. Such abnormality must be detected and reported proactively to the facility manager, who can act to avoid major losses. This paper describes the concept of detecting electrical and operational abnormality (anomaly) of loads through observing changes in electrical parameters collected by installation of energy meters. The paper proposes classification of anomalies based on their origin. Further, essential feature sets required for accurate detection of anomalies are described. To verify the concept, load data is collected from a pilot small scale manufacturing facility by installing energy meters at different load points in process lines. After preprocessing the raw data, necessary features are extracted and are subjected to classification algorithms for detecting possible anomalies. Results for two loads at test site are presented with comparison of support vector data descriptor and support vector machine algorithms for classification as normal or anomalous.
机译:印度制造业的重要组成部分缺乏能源流量的透明度,并对能效措施具有很大意识。在行业中工作的人类大多是半熟练的。生产输出,其质量和成本受能量浪费和设备故障的影响,导致电气故障和错误操作导致的停机时间。必须检测到这种异常,并主动地报告给设施经理,他们可以采取行动,以避免主要损失。本文介绍了通过观察通过安装能量计收集的电参数的变化来检测负载的电气和操作异常(异常)的概念。本文提出了基于原点的异常分类。此外,描述了精确地检测异常所需的基本特征集。为了验证概念,通过在工艺线中的不同负载点安装电能表来从导频小规模制造工具收集负载数据。在预处理原始数据之后,提取必要的特征,并经受用于检测可能的异常的分类算法。在测试站点上的两个负载的结果显示,支持矢量数据描述符和支持向量机算法作为正常或异常的分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号