用模拟神经组织的方法设计一个标准的瓶装水检测器

Joko Wahyunarto, Fachrudin Hunaini, Istiadi Istiadi
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引用次数: 0

摘要

预成型是在蒸煮过程中从瓶中取出的半成品材料。标准在一个产品中形成大多数相同的形状和颜色。然而,它不必在一个生产中关闭,因为它需要几个预制件,这些预制件的颜色和重量与其他预制件不同,因此它们不包括在标准中,必须被拒绝。在这种情况下,使用反向传播神经网络方法制作了一个标准的检测器和预成型饮料瓶的颜色,其中硬件加载arduino uno,光电二极管传感器,称重传感器和HX 711模块以及LCD i2c 16 × 2。光电二极管传感器可与HX711模块直接转换的直接转换预制体的称重传感器一起使用。然后在Arduino UNO模块中处理两个输入数据。Arduino UNO输出的数据在LCD上被批准,并在笔记本电脑上的Matlab中的人工神经网络中进行处理。研究结果的最终输出将显示在命令窗口matlab列中,其中包含丰富的“YES”或“NO”。在本研究中,反向传播人工神经网络作为一种提供准确评估的方法,通过显示19克的测试结果,颜色密度8,电压为0.038伏,输出数据为1,误差数据为-4.75E13。
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Rancang Bangun Detektor Standart Preform Botol Minuman Menggunakan Metode Jaringan Saraf Tiruan
Preform is a semi-finished material from a bottle before cooking in the blowing process. Standards form most, same shapes and colors in one production. However, it does not have to close in one production which requires several preforms that have different colors and weights than other preforms so that they are not included in the standard and must be rejected. In this case a standard detector and color of the preform drink bottle were made using backpropagation neural network method where hardware that loaded arduino uno, photodiode sensor, load cell and HX 711 module and LCD i2c 16 x 2. Photodiode sensors can be used in blue preform together with load cell which is translated directly preform which is directly converted by the HX711 module. Two input data is then processed in the Arduino UNO module. Data output from Arduino UNO is approved on the LCD and processed in the Artificial Neural Network in Matlab on the laptop. The final output of the research results will be displayed in the command window matlab column containing rich "YES" or "NO". In this study backpropagation artificial neural networks as a method to provide accurate assessment by displaying the test results with 19 grams, color density 8 with a voltage of 0.038 Volts and output data is 1 with error data -4.75E13.
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