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Times-series data augmentation and deep learning for construction equipment activity recognition

机译:用于建筑设备活动识别的时间序列数据扩充和深度学习

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Automated, real-time, and reliable equipment activity recognition on construction sites can help to minimize idle time, improve operational efficiency, and reduce emissions. Previous efforts in activity recognition of construction equipment have explored different classification algorithms anm accelerometers and gyroscopes. These studies utilized pattern recognition approaches such as statistical models (e.g., hidden-Markov models); shallow neural networks (e.g., Artificial Neural Networks); and distance algorithms (e.g., K-nearest neighbor) to classify the time-series data collected from sensors mounted on the equipment. Such methods necessitate the segmentation of continuous operational data with fixed or dynamic windows to extract statistical features. This heuristic and manual feature extraction process is limited by human knowledge and can only extract human-specified shallow features. However, recent developments in deep neural networks, specifically recurrent neural network (RNN), presents new opportunities to classify sequential time-series data with recurrent lateral connections. RNN can automatically learn high-level representative features through the network instead of being manually designed, making it more suitable for complex activity recognition. However, the application of RNN requires a large training dataset which poses a practical challenge to obtain from real construction sites. Thus, this study presents a data-augmentation framework for generating synthetic time-series training data for an RNN-based deep learning network to accurately and reliably recognize equipment activities. The proposed methodology is validated by generating synthetic data from sample datasets, that were collected from two earthmoving operations in the real world. The synthetic data along with the collected data were used to train a long short-term memory (LSTM)-based RNN. The trained model was evaluated by comparing its performance with traditionally used classification algorithms for construction equipment activity recognition. The deep learning framework presented in this study outperformed the traditionally used machine learning classification algorithms for activity recognition regarding model accuracy and generalization.
机译:在建筑工地上的自动化,实时和可靠的设备活动识别可以帮助最小化空闲时间,提高运营效率并减少排放。先前在建筑设备活动识别方面的努力已经探索了加速度计和陀螺仪的不同分类算法。这些研究利用了模式识别方法,例如统计模型(例如,隐马尔可夫模型);浅层神经网络(例如,人工神经网络);和距离算法(例如,K近邻)对从安装在设备上的传感器收集的时间序列数据进行分类。此类方法需要使用固定或动态窗口对连续操作数据进行分段以提取统计特征。这种启发式和手动的特征提取过程受到人类知识的限制,只能提取人类指定的浅层特征。然而,深度神经网络,特别是递归神经网络(RNN)的最新发展,提供了利用递归横向连接对顺序时间序列数据进行分类的新机会。 RNN可以通过网络自动学习高级代表性功能,而无需人工设计,因此更适合复杂的活动识别。但是,RNN的应用需要大量的训练数据集,这给从实际的建筑工地获取带来了实际挑战。因此,本研究提出了一种数据增强框架,用于为基于RNN的深度学习网络生成合成时间序列训练数据,以准确而可靠地识别设备活动。通过从示例数据集中生成合成数据来验证所提出的方法,这些数据是从现实世界中的两个推土作业中收集的。综合数据与收集的数据一起用于训练基于长期短期记忆(LSTM)的RNN。通过将训练后的模型的性能与用于建筑设备活动识别的传统分类算法进行比较来评估该模型。本研究提出的深度学习框架在模型准确性和泛化方面优于传统的机器学习分类算法来进行活动识别。

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