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Modbus Server模拟程序(源代码)

于 2021-11-07 发布
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自己写的modbus server端模拟程序。 传输方式选用的是RTU模式。 主要功能如下 1:设定监听端口号 2:modbus帧收发监视,显示到对话框上 3:modbus寄存器模拟,包括寄存器值查看,值修改等功能。 4:统计功能,统计收到的正确帧数和错误帧数。 5:各功能码个数统计功能,统计各功能码帧数,并用VC 的ACtiveX控件 mschart显示。 显示方式可以选择柱状图或者饼状图。 自己写的并且在VC++6编译通过。欢迎大家交流学习

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