“…Artificial intelligence technology to predict waste can use a multi-site Long Short-Term Memory (LSTM) neural network, which is an artificial neural network using a deep-learning approach [14], Random Forest and Knearest neighbor models [20], and ensemble learning [15]. Artificial intelligence technology that can be used to detect and classify waste includes machine vision technology and convolutional neural networks (CNN) algorithms [9,55], a neural network to train several photos of waste so that it can help in waste sorting based on color and location coordinates [36], multimodal cascaded convolutional neural network (MC-CNN) by combining DSSD, YOLOv4, and Faster-RCNN for automatic detection and classification of domestic waste [53], Lightweight CNN model using MobileNet V2 to accurately classify various types of waste, including recyclable waste, kitchen waste, hazardous waste and other waste [41], CNN and Random Forest to classify waste according to categories [43], CNN with the VGG16 type classifies captured waste images into categories of plastic, paper, and glass to order the trash container to open according to category [16], CNN with VGG16 identifies waste images with the registered dataset and sorts the waste [46], the GECM-EfficientNet model, which is part of AI, uses a dataset that has been trained to classify trash based on its categories [44], the K-nearest algorithm Neighbor (KNN) is used to classify bio and non-biodegradable waste levels and toxic gas concentrations [48]. The data recognition model can also be used for waste classification [40].…”