lorawan辅助下的智慧城市垃圾发电概念模型

Elif Ak, Kıymet Kaya, Y. Yaslan, S. Oktug
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引用次数: 2

摘要

随着传感器网络和机器学习(ML)技术在数据分析中的应用,这些工作对智慧城市的影响越来越大。作为智慧城市的一个子领域,废物管理和相关的废物转化研究和规划废物收集,处置和回收。其中,垃圾能源转化是垃圾处理的重要组成部分。预测从废物中获得的能源,并相应地规划能源供应,取决于对废物数量的估计和废物含量的了解。然而,固体废物的能源预测受到预测模型薄弱的影响,这导致智慧城市的管理策略被误导。低功耗广域网协议(LoRaWAN)等物联网(IoT)技术为智能城市(包括废物管理)的数据收集、监控和分析提供了新的机会。在本研究中,我们提出了lorawan辅助的垃圾焚烧能源概念模型,以提供的智慧城市用例为基础,利用LoRa网络作为底层数据收集步骤,构建垃圾焚烧能源预测模型。因此,我们受益于预先训练的梯度增强回归(GBR)模型,该模型的过程细节在我们之前的研究中提供,使用日常数据以及其他相关变量(如温度)来预测城市固体废物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LoRaWAN-aided Waste-to-Energy Concept Model in Smart Cities
With the use of sensor networks and machine learning (ML) techniques in data analysis, the impact of the works for smart cities is getting greater. As a sub-field o f s mart cities, waste management, and related waste transformations study and plan waste collection, disposal, and recycling. Especially, waste to energy transformation composes the major part of waste disposal. Predicting the energy to be obtained from waste and planning the energy supply accordingly depend on estimating the amount of waste and knowing its content. However, energy prediction from solid waste suffers from weak forecasting models, which lead to misguided management strategies in smart cities. Internet of Things (IoT) technologies like low-power, wide-area networking protocol (LoRaWAN) offer new opportunities to collect, monitor, and analyze data in smart cities, including waste management. In this study, we propose the LoRaWAN-aided Waste-to-Energy Concept Model to build the waste-to-energy prediction model with the provided smart city use case using LoRa network as an underlying data collection step. Consequently, we benefit from the pre-trained Gradient Boosting Regression (GBR) model whose process details are provided in our previous study, to predict municipal solid waste using daily data along with other relevant variables such as temperature.
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