Pedro Martins , Ricardo Cláudio , Francisco Soares , Jorge Leitão , Paulo Váz , José Silva , Maryam Abbasi
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In the data collection layer, low-computing devices, utilizing a Raspberry Pi, measure humidity levels in individual wood stacks. These devices then transmit the data via Low Power Bluetooth to the subsequent layer. The data relay layer incorporates an Android application designed to aggregate, normalize, and transmit collected data. Furthermore, it provides users with visualization tools for comprehensive data understanding. The data storage and analysis layer, developed with Django, serves as the back-end, offering management functionalities for stacks, sensors, overall data, and analysis capabilities. This layer can generate humidity forecasts based on real-time weather information. The implementation of this intelligent control system enables accurate insights into humidity levels, triggering alerts for any anomalies during the drying process. 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引用次数: 0
摘要
本文探讨了作为计算机工程硕士学位课程的一部分而进行的研发工作,其主要重点是加强天然木材干燥的控制机制。虽然这种方法因其在劳动力和能源方面的成本效益而闻名,但却存在干燥周期较慢且不稳定的问题。该项目的目标是实施一套智能控制系统,以显著改善对每堆木料湿度水平的监控和记录。此外,该系统还能根据天气预报 API 提供的数据预测湿度。建议的解决方案包括三层系统:数据收集、中继和分析。在数据收集层,利用树莓派(Raspberry Pi)的低功耗设备测量单个木垛的湿度水平。然后,这些设备通过低功耗蓝牙将数据传输到下一层。数据中继层包含一个安卓应用程序,用于汇总、归一化和传输收集到的数据。此外,它还为用户提供了全面了解数据的可视化工具。使用 Django 开发的数据存储和分析层作为后端,提供堆栈、传感器、整体数据和分析功能的管理功能。该层可根据实时天气信息生成湿度预报。通过实施这一智能控制系统,可以准确了解湿度水平,并在干燥过程中对任何异常情况发出警报。这就减少了持续现场监督的必要性,优化了工作效率,降低了成本,并消除了重复性工作。
Intelligent Control System for Wood Drying: Scalable Architecture, Predictive Analytics, and Future Enhancements
This article explores the research and development undertaken as part of a Master’s degree in Computer Engineering, with a primary focus on enhancing control mechanisms for natural wood drying. While this method is known for its cost-effectiveness in terms of labor and energy, it suffers from slower and unstable drying cycles. The project’s objective is to implement an intelligent control system that significantly improves monitoring and recording of humidity levels in each wooden stack. Additionally, the system incorporates the capability to predict humidity based on data sourced from a weather forecasting API. The proposed solution entails a three-layer system: data collection, relay, and analysis. In the data collection layer, low-computing devices, utilizing a Raspberry Pi, measure humidity levels in individual wood stacks. These devices then transmit the data via Low Power Bluetooth to the subsequent layer. The data relay layer incorporates an Android application designed to aggregate, normalize, and transmit collected data. Furthermore, it provides users with visualization tools for comprehensive data understanding. The data storage and analysis layer, developed with Django, serves as the back-end, offering management functionalities for stacks, sensors, overall data, and analysis capabilities. This layer can generate humidity forecasts based on real-time weather information. The implementation of this intelligent control system enables accurate insights into humidity levels, triggering alerts for any anomalies during the drying process. This reduces the necessity for constant on-site supervision, optimizes work efficiency, lowers costs, and eliminates repetitive tasks.