Department of Chemical and Petroleum Engineering, United Arab Emirates University, Sheikh Khalifa bin Zayed Street, Al-Ain 15551, United Arab Emirates.
Department of Computer Science, University of British Columbia, Vancouver, British Columbia V6T 1Z4, Canada.
J Chem Inf Model. 2023 Apr 24;63(8):2305-2320. doi: 10.1021/acs.jcim.3c00183. Epub 2023 Apr 10.
The principal objective in the treatment of e-waste is to capture the bromine released from the brominated flame retardants (BFRs) added to the polymeric constituents of printed circuits boards (PCBs) and to produce pure bromine-free hydrocarbons. Metal oxides such as calcium hydroxide (Ca(OH)) have been shown to exhibit high debromination capacity when added to BFRs in e-waste and capturing the released HBr. Tetrabromobisphenol A (TBBA) is the most commonly utilized model compound as a representative for BFRs. Our coauthors had previously studied the pyrolytic and oxidative decomposition of the TBBA:Ca(OH) mixture at four different heating rates, 5, 10, 15, and 20 °C/min, using a thermogravimetric (TGA) analyzer and reported the mass loss data between room temperature and 800 °C. However, in the current work, we applied different machine learning (ML) and chemometric techniques involving regression models to predict the TGA data at different heating rates. The motivation of this work was to reproduce the TGA data with high accuracy in order to eliminate the physical need of the instrument itself, so that this could save significant experimental time involving sample preparation and subsequently minimizing human errors. The novelty of our work lies in the application of ML techniques to predict the TGA data from e-waste pyrolysis since this has not been conducted previously. The significance of our work lies in the fact that e-waste is ever increasing, and predicting the mass loss curves faster will enable better compositional analysis of the e-waste samples in the industry. Three ML models were employed in our work, namely Linear, random forest (RF), and support vector regression (SVR), out of which the RF method exhibited the highest coefficient of determination () of 0.999 and least error of prediction as estimated by the root mean squared error (RMSEP) at all 4 heating rates for both pyrolysis and oxidation conditions. An 80:20 split was used for calibration and validation data sets. Furthermore, for showing versatility and robustness of the best-predicting RF model, it was also trained using all the data points in the lower heating rates of 5 and 10 °C/min and predicted on all the data points for the higher heating rates of 15 and 20 °C/min to again obtain a high of 0.999. The excellent performance of the RF model showed that ML techniques can be used to eliminate the physical use of TGA equipment, thus saving experimental time and potential human errors, and can further be applied in other real-time e-waste recycling scenarios.
处理电子废物的主要目标是捕获添加到印刷电路板(PCB)聚合物成分中的溴化阻燃剂(BFR)中释放的溴,并生产纯净的无溴烃类化合物。已证明,当将金属氧化物(如氢氧化钙(Ca(OH))添加到电子废物中的 BFR 中时,金属氧化物具有很高的脱溴能力,并能捕获释放出的 HBr。四溴双酚 A(TBBA)是最常用的模型化合物,可代表 BFR。我们的合著者之前曾研究过 TBBA:Ca(OH)混合物在四个不同加热速率(5、10、15 和 20°C/min)下的热解和氧化分解,使用热重分析仪(TGA)并报告了室温至 800°C 之间的质量损失数据。然而,在当前的工作中,我们应用了不同的机器学习(ML)和化学计量技术,包括回归模型,以预测不同加热速率下的 TGA 数据。这项工作的动机是用高的准确性再现 TGA 数据,以消除仪器本身的物理需求,从而可以节省大量涉及样品制备的实验时间,进而最小化人为错误。我们工作的新颖之处在于将 ML 技术应用于从电子废物热解中预测 TGA 数据,因为这在以前从未进行过。我们工作的意义在于,电子废物的数量不断增加,更快地预测质量损失曲线将能够更好地对工业中的电子废物样品进行成分分析。我们的工作采用了三种 ML 模型,即线性、随机森林(RF)和支持向量回归(SVR),其中 RF 方法在所有 4 种加热速率下均表现出最高的决定系数()为 0.999 和最小的预测误差,根均方误差(RMSEP)估算值。对于热解和氧化条件,对于所有数据点均为 0.999。使用 80:20 分割进行校准和验证数据集。此外,为了展示最佳预测 RF 模型的多功能性和稳健性,还使用较低加热速率(5 和 10°C/min)下的所有数据点对其进行了训练,并在较高加热速率(15 和 20°C/min)下的所有数据点上对其进行了预测,再次获得了 0.999 的高。RF 模型的出色性能表明,机器学习技术可用于消除 TGA 设备的物理使用,从而节省实验时间和潜在的人为错误,并且可以进一步应用于其他实时电子废物回收场景。