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C#串口调试工具源码

于 2020-12-05 发布
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下载积分: 1 下载次数: 1

代码说明:

1、自动检测系统串口数量,如有USB转串口设备插入,即插即用,自动添加到下拉列表框。2、修改端口设置后自动打开串口。3、可以发送字符、十六进制数据。4、字符和十六进制数据可以定时循环发送。5、支持自定义帧格式,自动加入校验。可选和校验和异或校验。6、有十进制十六进制互转功能,方便参数计算。7、接收分别以字符和十六进制显示,完美支持中文显示和回车换行。可以自动滚屏,自动清屏。8、单击接收到的十六进制数据,可以自动解码成十进制有符号和无符号数据,方便调试通讯协议。9、换肤功能

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