Delft University of Technology, Faculty of Civil Engineering and Geosciences, Resources and Recycling Group, Stevinweg 1, 2628 CN, The Netherlands.
Talanta. 2014 Mar;120:239-47. doi: 10.1016/j.talanta.2013.11.082. Epub 2013 Dec 4.
Effective discrimination between different waste materials is of paramount importance for inline quality inspection of recycle concrete aggregates from demolished buildings. The moving targeted materials in the concrete waste stream are wood, PVC, gypsum block, glass, brick, steel rebar, aggregate and cement paste. For each material, up to three different types were considered, while thirty particles of each material were selected. Proposed is a reliable classification methodology based on integration of the LIBS spectral emissions in a fixed time window, starting from the deployment of the laser shot. PLS-DA (multi class) and the hybrid combination PCA-Adaboost (binary class) were investigated as efficient classifiers. In addition, mean centre and auto scaling approaches were compared for both classifiers. Using 72 training spectra and 18 test spectra per material, each averaged by ten shots, only PLS-DA achieved full discrimination, and the mean centre approach made it slightly more robust. Continuing with PLS-DA, the relation between data averaging and convergence to 0.3% average error was investigated using 9-fold cross-validations. Single-shot PLS-DA presented the highest challenge and most desirable methodology, which converged with 59 PC. The degree of success in practical testing will depend on the quality of the training set and the implications of the possibly remaining false positives.
有效区分不同的废物材料对于从拆除建筑物中回收的再生混凝土骨料的在线质量检查至关重要。混凝土废料流中的移动目标材料有木材、聚氯乙烯(PVC)、石膏砌块、玻璃、砖、钢筋、骨料和水泥浆。每种材料考虑了三种不同类型,每种材料选择了三十个颗粒。提出了一种基于在固定时间窗口内整合 LIBS 光谱发射的可靠分类方法,该方法从激光射击开始。研究了 PLS-DA(多类)和 PCA-Adaboost 混合组合(二类)作为有效的分类器。此外,还比较了这两种分类器的均值中心化和自动缩放方法。对于每种材料,使用 72 个训练光谱和 18 个测试光谱,每个光谱平均由十个激光射击产生,只有 PLS-DA 实现了完全区分,而均值中心化方法使其更稳健。继续使用 PLS-DA,通过 9 折交叉验证研究了数据平均和收敛到 0.3%平均误差之间的关系。单次激光射击 PLS-DA 提出了最高的挑战和最理想的方法,它在 59 个主成分上收敛。实际测试的成功程度将取决于训练集的质量和可能存在的假阳性的影响。