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基于无线传输技术的汽车智能仪表设计

On Design of Automobile Intelligent Instrument Wireless Transmission Technology
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摘要 针对传统仪表显示采用线束连接,导致汽车仪表系统的抗电磁干扰能力弱、准确率和精度等较低的问题,提出一种基于CAN无线总线技术的智能仪表系统。结合汽车仪表工作原理,根据智能仪表系统的功能需求,分别从硬件和软件方面对智能仪表系统进行设计;利用CAN无线通信技术实现汽车数据采集与不同电子器件的通信。最后,通过脉冲信号模拟对智能仪表系统进行测试,验证了该设计方案的可行性,为智能技术的应用提供参考。 In view of the traditional instrument display the harness connection, resulting in automobile meter systems of anti electromagnetic interference ability, accuracy and precision are relatively low problem, this paper puts forward a kind of intelligent instrument system based on CAN bus wireless technology. In combination with the work principle of auto instrument, according to the functional requirements of the intelligent instrument system, it is designed respectively in hardware and software;Using CAN wireless communication technology to realize vehicle data acquisition with different electronic communication device;Finally, by testing the intelligent instrument system based on pulse signal simulation, the feasibility of the design is verified, and it provides reference for the application of intelligent technology.
作者 朱晓红
出处 《西安铁路职业技术学院学报》 2017年第3期38-41,共4页 Journal of Xi’an Railway Vocational & Technical Institute
关键词 无线传输 抗干扰 数字滤波 智能仪表 脉冲信号 Wireless Transmission Anti - interference Digital Filter Intelligent Instrument Pulse Signal
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