利用近红外光谱学设计和开发茄子果实和嫩枝螟(Leucinodes Orbonalis)检测器

Maria Patrice Lajom, Joseph Paul Remigio, Edwin Arboleda, Rhen John Rey Sacala
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引用次数: 0

摘要

茄子果实和嫩枝钻心虫(EFSB)是一种病害,如果不及时发现,会影响整个茄子果实。因此,我们提出了一种手持式检测枪。它的设计和开发目的是以非侵入方式对未受 EFSB 侵染和已受 EFSB 侵染的茄子果实进行分类。使用 Arduino Nano 作为微控制器和近红外光谱(NIRS)模块,可确定虫害情况并通过其 OLED 显示屏显示出来。通过探测器的近红外光谱(NIRS)模块测量到的反射率数据将存储在一个 MicroSD 模块中,以备进一步使用。由于原型是为在线监测而开发的,因此便携性就显得尤为重要,其设计采用了手持枪的形式,内部由 9V 可充电电池供电。探测器的 3D 打印底盘包含上述组件和模块,以及电源和近红外探测开关。通过支持向量机(SVM),使用 Jupyter 训练和开发了分类器模型,并将其提取为 Arduino Nano 模块的 C++ 代码。与农民传统的准确度、精确度和速度相比,原型的准确度为 84%,精确度为 72.83%,平均速度为 9.736 秒,表现更佳。
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Design and Development of Eggplant Fruit and Shoot Borer (Leucinodes Orbonalis) Detector Using Near-Infrared Spectroscopy
An Eggplant Fruit and Shoot Borer (EFSB) is a disease that affects the entirety of the eggplant fruit if not detected. Hence, a detector was proposed in the form of a handheld gun. It was designed and developed to non-invasively classify eggplant fruits that are non-infested and infested with EFSB. Using an Arduino Nano as its microcontroller and a near-infrared spectroscopy (NIRS) module, insect infestation is determined and displayed through its OLED display. Measured reflectance data through the NIRS module of the detector is then stored inside a MicroSD module for further use. Since the prototype was developed for online monitoring, portability was given of utmost importance, pattering the design in the form of a handheld gun, inside of which was powered by a 9V rechargeable battery. The 3D-printed chassis of the detector houses the aforementioned components and modules, alongside with switches for power and near-infrared detection. Through Support Vector Machine (SVM), the classifier model was trained and developed using Jupyter and was extracted as a C++ code for the Arduino Nano module. Compared with a farmer's traditional performance in terms of accuracy, precision, and speed, the prototype performed better with an accuracy of 84%, precision of 72.83%, and an average speed of 9.736 seconds.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
74
审稿时长
50 weeks
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