9,304 research outputs found
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iSEA: IoT-based smartphone energy assistant for prompting energy-aware behaviors in commercial buildings
Providing personalized energy-use information to individual occupants enables the adoption of energy-aware behaviors in commercial buildings. However, the implementation of individualized feedback still remains challenging due to the difficulties in collecting personalized data, tracking personal behaviors, and delivering personalized tailored information to individual occupants. Nowadays, the Internet of Things (IoT) technologies are used in a variety of applications including real-time monitoring, control, and decision-making due to the flexibility of these technologies for fusing different data streams. In this paper, we propose a novel IoT-based smartphone energy assistant (iSEA) framework which prompts energy-aware behaviors in commercial buildings. iSEA tracks individual occupants through tracking their smartphones, uses a deep learning approach to identify their energy usage, and delivers personalized tailored feedback to impact their usage. iSEA particularly uses an energy-use efficiency index (EEI) to understand behaviors and categorize them into efficient and inefficient behaviors. The iSEA architecture includes four layers: physical, cloud, service, and communication. The results of implementing iSEA in a commercial building with ten occupants over a twelve-week duration demonstrate the validity of this approach in enhancing individualized energy-use behaviors. An average of 34% energy savings was measured by tracking occupants’ EEI by the end of the experimental period. In addition, the results demonstrate that commercial building occupants often ignore controlling over lighting systems at their departure events that leads to wasting energy during non-working hours. By utilizing the existing IoT devices in commercial buildings, iSEA significantly contributes to support research efforts into sensing and enhancing energy-aware behaviors at minimal costs
Internet of things (IoT) based adaptive energy management system for smart homes
PhD ThesisInternet of things enhances the flexibility of measurements under different environments, the
development of advanced wireless sensors and communication networks on the smart grid
infrastructure would be essential for energy efficiency systems. It makes deployment of a
smart home concept easy and realistic. The smart home concept allows residents to control,
monitor and manage their energy consumption with minimal wastage. The scheduling of
energy usage enables forecasting techniques to be essential for smart homes. This thesis
presents a self-learning home management system based on machine learning techniques
and energy management system for smart homes.
Home energy management system, demand side management system, supply side management system, and power notification system are the major components of the proposed
self-learning home management system. The proposed system has various functions including price forecasting, price clustering, power forecasting alert, power consumption alert, and
smart energy theft system to enhance the capabilities of the self-learning home management
system. These functions were developed and implemented through the use of computational
and machine learning technologies. In order to validate the proposed system, real-time power
consumption data were collected from a Singapore smart home and a realistic experimental
case study was carried out. The case study had proven that the developed system performing
well and increased energy awareness to the residents. This proposed system also showcases its customizable ability according to different types of environments as compared to
traditional smart home models.
Forecasting systems for the electricity market generation have become one of the foremost
research topics in the power industry. It is essential to have a forecasting system that can
accurately predict electricity generation for planning and operation in the electricity market.
This thesis also proposed a novel system called multi prediction system and it is developed
based on long short term memory and gated recurrent unit models. This proposed system is
able to predict the electricity market generation with high accuracy.
Multi Prediction System is based on four stages which include a data collecting and
pre-processing module, a multi-input feature model, multi forecast model and mean absolute
percentage error. The data collecting and pre-processing module preprocess the real-time
data using a window method. Multi-input feature model uses single input feeding method,
double input feeding method and multiple feeding method for features input to the multi
forecast model. Multi forecast model integrates long short term memory and gated recurrent
unit variations such as regression model, regression with time steps model, memory between
batches model and stacked model to predict the future generation of electricity. The mean
absolute percentage error calculation was utilized to evaluate the accuracy of the prediction.
The proposed system achieved high accuracy results to demonstrate its performance
Supporting Cyber-Physical Systems with Wireless Sensor Networks: An Outlook of Software and Services
Sensing, communication, computation and control technologies are the essential building blocks of a cyber-physical system (CPS). Wireless sensor networks (WSNs) are a way to support CPS as they provide fine-grained spatial-temporal sensing, communication and computation at a low premium of cost and power. In this article, we explore the fundamental concepts guiding the design and implementation of WSNs. We report the latest developments in WSN software and services for meeting existing requirements and newer demands; particularly in the areas of: operating system, simulator and emulator, programming abstraction, virtualization, IP-based communication and security, time and location, and network monitoring and management. We also reflect on the ongoing
efforts in providing dependable assurances for WSN-driven CPS. Finally, we report on its applicability with a case-study on smart buildings
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A novel machine learning approach for identifying the drivers of domestic electricity users’ price responsiveness
Time-based pricing programs for domestic electricity users have been effective in reducing peak demand and facilitating renewables integration. Nevertheless, high cost, price non-responsiveness and adverse selection may create the possible challenges. To overcome these challenges, it can be fruitful to investigate the ‘high-potential’ users, which are more responsive to price changes and apply time-based pricing to these users. Few studies have investigated how to identify which users are more price-responsive. We aim to fill this gap by comprehensively identifying the drivers of domestic users’ price responsiveness, in order to facilitate the selection of the high-potential users. We adopt a novel data-driven approach, first by a feed forward neural network model to accurately determine the baseline monthly peak consumption of individual households, followed by an integrated machine-learning variable selection methodology to identify the drivers of price responsiveness applied to Irish smart meter data from 2009-10 as part of a national Time of Use trial. This methodology substantially outperforms traditional variable selection methods by combining three advanced machine-learning techniques. Our results show that the response of energy users to price change is affected by a number of factors, ranging from demographic and dwelling characteristics, psychological factors, historical electricity consumption, to appliance ownership. In particular, historical electricity consumption, income, the number of occupants, perceived behavioural control, and adoption of specific appliances, including immersion water heater and dishwasher, are found to be significant drivers of price responsiveness. We also observe that continual price increase within a moderate range does not drive additional peak demand reduction, and that there is an intention-behaviour gap, whereby stated intention does not lead to actual peak reduction behavior. Based on our findings, we have conducted scenario analysis to demonstrate the feasibility of selecting the high potential users to achieve significant peak reduction
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