consumption behavior
Introducing AI-Driven IoT Energy Management Framework
Mruthyunjaya, Shivani, Dutta, Anandi, Islam, Kazi Sifatul
Power consumption has become a critical aspect of modern life due to the consistent reliance on technological advancements. Reducing power consumption or following power usage predictions can lead to lower monthly costs and improved electrical reliability. The proposal of a holistic framework to establish a foundation for IoT systems with a focus on contextual decision making, proactive adaptation, and scalable structure. A structured process for IoT systems with accuracy and interconnected development would support reducing power consumption and support grid stability. This study presents the feasibility of this proposal through the application of each aspect of the framework. This system would have long term forecasting, short term forecasting, anomaly detection, and consideration of qualitative data with any energy management decisions taken. Performance was evaluated on Power Consumption Time Series data to display the direct application of the framework.
- North America > United States (0.05)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- Information Technology > Internet of Things (1.00)
- Information Technology > Data Science > Data Mining (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
Water Demand Forecasting of District Metered Areas through Learned Consumer Representations
Ramachandran, Adithya, Neergaard, Thorkil Flensmark B., Arias-Vergara, Tomás, Maier, Andreas, Bayer, Siming
Advancements in smart metering technologies have significantly improved the ability to monitor and manage water utilities. In the context of increasing uncertainty due to climate change, securing water resources and supply has emerged as an urgent global issue with extensive socioeconomic ramifications. Hourly consumption data from end-users have yielded substantial insights for projecting demand across regions characterized by diverse consumption patterns. Nevertheless, the prediction of water demand remains challenging due to influencing non-deterministic factors, such as meteorological conditions. This work introduces a novel method for short-term water demand forecasting for District Metered Areas (DMAs) which encompass commercial, agricultural, and residential consumers. Unsupervised contrastive learning is applied to categorize end-users according to distinct consumption behaviors present within a DMA. Subsequently, the distinct consumption behaviors are utilized as features in the ensuing demand forecasting task using wavelet-transformed convolutional networks that incorporate a cross-attention mechanism combining both historical data and the derived representations. The proposed approach is evaluated on real-world DMAs over a six-month period, demonstrating improved forecasting performance in terms of MAPE across different DMAs, with a maximum improvement of 4.9%. Additionally, it identifies consumers whose behavior is shaped by socioeconomic factors, enhancing prior knowledge about the deterministic patterns that influence demand.
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.05)
- North America > United States > Louisiana > Orleans Parish > New Orleans (0.04)
- Europe > Italy (0.04)
- (2 more...)
- Energy > Power Industry (0.46)
- Water & Waste Management > Water Management > Water Supplies & Services (0.34)
- Information Technology > Data Science (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Forecasting (0.83)
EPR-GAIL: An EPR-Enhanced Hierarchical Imitation Learning Framework to Simulate Complex User Consumption Behaviors
Feng, Tao, Zhang, Yunke, Wang, Huandong, Li, Yong
User consumption behavior data, which records individuals' online spending history at various types of stores, has been widely used in various applications, such as store recommendation, site selection, and sale forecasting. However, its high worth is limited due to deficiencies in data comprehensiveness and changes of application scenarios. Thus, generating high-quality sequential consumption data by simulating complex user consumption behaviors is of great importance to real-world applications. Two branches of existing sequence generation methods are both limited in quality. Model-based methods with simplified assumptions fail to model the complex decision process of user consumption, while data-driven methods that emulate real-world data are prone to noises, unobserved behaviors, and dynamic decision space. In this work, we propose to enhance the fidelity and trustworthiness of the data-driven Generative Adversarial Imitation Learning (GAIL) method by blending it with the Exploration and Preferential Return EPR model . The core idea of our EPR-GAIL framework is to model user consumption behaviors as a complex EPR decision process, which consists of purchase, exploration, and preference decisions. Specifically, we design the hierarchical policy function in the generator as a realization of the EPR decision process and employ the probability distributions of the EPR model to guide the reward function in the discriminator. Extensive experiments on two real-world datasets of user consumption behaviors on an online platform demonstrate that the EPR-GAIL framework outperforms the best state-of-the-art baseline by over 19\% in terms of data fidelity. Furthermore, the generated consumption behavior data can improve the performance of sale prediction and location recommendation by up to 35.29% and 11.19%, respectively, validating its advantage for practical applications.
- Information Technology > Artificial Intelligence > Representation & Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.95)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (0.93)
- (2 more...)
Enhancing User Interest based on Stream Clustering and Memory Networks in Large-Scale Recommender Systems
Liu, Peng, Wang, Nian, Xu, Cong, Zhao, Ming, Wang, Bin, Ren, Yi
Recommender Systems (RSs) provide personalized recommendation Recommender Systems (RSs) [1, 2] which provide personalized service based on user interest, which are widely used in various recommendation service based on user interest are widely used in platforms. However, there are lots of users with sparse interest various platforms such as short video platforms [3, 7, 14], video due to lacking consumption behaviors, which leads to poor recommendation platforms [4, 5], E-commerce platforms [6, 8-11] and social networks results for them. This problem is widespread in [12, 13], serving billions of users. In RSs, Ranking typically large-scale RSs and is particularly difficult to address. To solve uses a Multi-Task Learning model (MTL) [4, 8, 16-21] and lots this problem, we propose a novel solution named User Interest of features to finely predict the scores of various user behaviors Enhancement (UIE) which enhances user interest including user such as click, watching time, fast slide, like and sharing for thousands profile and user history behavior sequences using the enhancement of candidates. The accuracy of the scores outputted by MTL vectors and personalized enhancement vector generated with is crucial for RSs [4]. In RSs, user interest includes user profile the help of other similar users and relevant items based on stream and user history behavior sequences, as shown in Figure 1 and clustering and memory networks from different perspectives. UIE Figure 2, which determines the upper limit of ranking model's not only remarkably improves model performance on the users performance. However, lots of users only have sparse interest due with sparse interest but also significantly enhance model performance to lacking consumption behaviors.
- Asia > China > Beijing > Beijing (0.05)
- Asia > Myanmar > Tanintharyi Region > Dawei (0.04)
- North America > United States > District of Columbia > Washington (0.04)
- (17 more...)
Power Consumption Modeling of 5G Multi-Carrier Base Stations: A Machine Learning Approach
Piovesan, Nicola, Lopez-Perez, David, De Domenico, Antonio, Geng, Xinli, Bao, Harvey
The fifth generation of the Radio Access Network (RAN) has brought new services, technologies, and paradigms with the corresponding societal benefits. However, the energy consumption of 5G networks is today a concern. In recent years, the design of new methods for decreasing the RAN power consumption has attracted interest from both the research community and standardization bodies, and many energy savings solutions have been proposed. However, there is still a need to understand the power consumption behavior of state-ofthe-art base station architectures, such as multi-carrier active antenna units (AAUs), as well as the impact of different network parameters. In this paper, we present a power consumption model for 5G AAUs based on artificial neural networks. We demonstrate that this model achieves good estimation performance, and it is able to capture the benefits of energy saving when dealing with the complexity of multi-carrier base stations architectures. Importantly, multiple experiments are carried out to show the advantage of designing a general model able to capture the power consumption behaviors of different types of AAUs. Finally, we provide an analysis of the model scalability and the training data requirements.
Internet of Behavior (IoB) and Explainable AI Systems for Influencing IoT Behavior
Elayan, Haya, Aloqaily, Moayad, Guizani, Mohsen
Pandemics and natural disasters over the years have changed the behavior of people, which has had a tremendous impact on all life aspects. With the technologies available in each era, governments, organizations, and companies have used these technologies to track, control, and influence the behavior of individuals for a benefit. Nowadays, the use of the Internet of Things (IoT), cloud computing, and artificial intelligence (AI) have made it easier to track and change the behavior of users through changing IoT behavior. This article introduces and discusses the concept of the Internet of Behavior (IoB) and its integration with Explainable AI (XAI) techniques to provide trusted and evident experience in the process of changing IoT behavior to ultimately improving users' behavior. Therefore, a system based on IoB and XAI has been proposed in a use case scenario of electrical power consumption that aims to influence user consuming behavior to reduce power consumption and cost. The scenario results showed a decrease of 522.2 kW of active power when compared to original consumption over a 200-hours period. It also showed a total power cost saving of 95.04 Euro for the same period. Moreover, decreasing the global active power will reduce the power intensity through the positive correlation.
- North America > Canada > Ontario > National Capital Region > Ottawa (0.28)
- Europe > France (0.05)
- Asia > Middle East > Qatar (0.05)
- (10 more...)
Uncover Residential Energy Consumption Patterns Using Socioeconomic and Smart Meter Data
Tang, Wenjun, Wang, Hao, Lee, Xian-Long, Yang, Hong-Tzer
This paper models residential consumers' energy-consumption behavior by load patterns and distributions and reveals the relationship between consumers' load patterns and socioeconomic features by machine learning. We analyze the real-world smart meter data and extract load patterns using K-Medoids clustering, which is robust to outliers. We develop an analytical framework with feature selection and deep learning models to estimate the relationship between load patterns and socioeconomic features. Specifically, we use an entropy-based feature selection method to identify the critical socioeconomic characteristics that affect load patterns and benefit our method's interpretability. We further develop a customized deep neural network model to characterize the relationship between consumers' load patterns and selected socioeconomic features. Numerical studies validate our proposed framework using Pecan Street smart meter data and survey. We demonstrate that our framework can capture the relationship between load patterns and socioeconomic information and outperform benchmarks such as regression and single DNN models.