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锅炉蒸汽氢电导超标原因分析及解决办法

Analysis of causes of excessive electric conductivity of steam in boiler and its solution
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摘要 锅炉蒸汽氢电导超标对锅炉水的水质产生严重影响,通过分析超标原因,结合对应的解决方法,确保锅炉水质稳定。对脱盐水、高压锅炉给水、AP蒸汽凝结水进行取样分析,分析CO2、p H、NH4+、CO32-、HCO3-值,观察电导的变化情况。结合常见的锅炉蒸汽氢电导超标原因,如离子交换器树脂问题、换热器工艺气泄露、在线仪表有偏差等,根据工程案例,确定超标原因,得出对应的解决方案,实现锅炉蒸汽氢电导超标问题的有效诊断。 The water quality of boiler water has a serious impact on the boiler steam hydrogen conductivity. Through the analysis of the causes, combined with the corresponding solution, to ensure the stability of the boiler water quality. Sampling and analysis of water supply, AP steam condensate water of the brine, high pressure boiler, CO2, p H, NH4+, CO32-, HCO3-value, determine the reasons that exceed the standard solution, corresponding to the implementation of the boiler steam hydrogen conductance is effective diagnosis exceed the standard problem.
出处 《世界有色金属》 2016年第9S期157-158,共2页 World Nonferrous Metals
关键词 锅炉蒸汽 氢电导超标 换热器 AP蒸汽凝结水 boiler steam excessive hydrogen conductivity heat exchanger AP steam condensation water
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