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煤炭灰分线上探测方法对比研究

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摘要 文章详细讲述了采用双向能源γ射线穿透技术等为典型代表的几种常规煤炭灰烬组分线上探测解决方案的根本原理、工艺方法特征、一般优势及弊端,并且针对探测准确程度、使用范畴、稳定性、安全性和性能与价格比等等重要参数实行了比较与研究。 This paper describes in detail the fundamental principle,process characteristics,general advantages and disadvantages of several conventional on-line detection solutions for coal ash components,which are typically represented by two-way energyγ-ray penetration technology.In addition,some important parameters such as detection accuracy,application scope,stability,safety and performance-to-price ratio are compared and studied.
作者 郭小东
出处 《科技创新与应用》 2020年第25期128-129,共2页 Technology Innovation and Application
关键词 煤炭灰烬组分 线上探检 Γ射线 镭射 coal ash composition on-line detection γ-ray laser
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