反向传播神经元网络在半导体氢探测装置数据链接传输中的应用

Yi-Chi Tsai, Kun-Wei Lin
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引用次数: 0

摘要

在本研究中,我们制作了一种基于半导体型的氢探测装置,具有体积小、灵敏度高、可在室温下工作的优点。我们还演示了通过将反向传播神经元网络应用于系统的改进,以便在不影响数据质量的情况下最小化数据传输量。在对指定地点进行监测的实际情况下,需要进行多重传感和无线数据传输。这种功能需要大量的数据传输,通常会导致更高的功耗和传输中的数据丢失。本研究开发了一种自制的氢气检测装置,并应用神经元网络辅助实时检测系统推导传输量。在不牺牲原始数据质量的情况下,实验结果成功地减少了97.4%的传输数据。提出了一种有效的减少数据传输量和节约检测设备功耗的方法。
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Application of back propagation neuron network on data linkage transmission of semiconductor hydrogen detection device
In this study we have fabricated a hydrogen detection device based on semiconductor type with the advantages of smaller in size, higher sensitivity and capable to operate under room temperature. We have also demonstrated an improvement by applying back propagation neuron network to the system in order to minimize the amount of data transmission without influencing data quality. In the practical situation that monitoring the designate sites requires multiple sensing and wireless data transmission. Such function requires massive data transmission volume and would normally result higher power consumption and data lost in transmission. This study has developed a self-made hydrogen detection device and applied neuron network to assist the real time detection system deducing transmission volume. The empirical result has successfully reduced 97.4% of the transmitted data without sacrificing the original data quality. Which suggested an effective methodology to reduce data transmission volume requirement and conserve detection device power usage.
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