Development of Advanced Smart Energy Management Framework Integrated with Optimization Techniques and Prediction Models for Demand Side Consumers Based on IoT Platform
Date
2020
Authors
Pawar, Prakash.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Smart grid framework plays an indispensable role in dealing with the usage of available electrical energy proficiently. However, to manage power
supply effectively, electrical appliances and devices at home and building
environment should have smart energy management capability. Further,
Smart Energy Management System (SEMS) can be unified with the smart
grid for effective power consumption. SEMS can be used to control the
status of the electrical appliances and devices by monitoring environmental conditions with the associated sensors and the context in which the
appliance is being operated. In addition, SEMS can be used to reduce the
standby power consumption of the appliances by turning off the supply to
it. The SEMS system can be associated with a Grid or the distributed generation, and thus power negotiation techniques can be applied depending
on the availability of the power or tariff information. In this research work,
the emphasis is given to the design of a smart energy management system
and deployment of power negotiating algorithms for effective power utilization. The proposed SEMS replaces the scenario of a complete power outage
in a particular region with partial load shedding in a controlled manner
as per consumer’s priority. The hardware experiments are demonstrated
assuming a demand response event, taking into account the constraints
of maximum demand limits in various cases of changing priorities. The
cost optimization algorithms are deployed by scheduling the appliances,
considering the Time of Usage (ToU) and minimum slab rate. Sensory information’s and indicators are used to control the loads with user comfort
settings and alarm the user during peak hour usage, respectively. Reliable ZigBee communication is established in the Application Transparent
(AT) mode of configuration with a self-diagnostic mechanism. Internet of
Things (IoT) environment is created for uploading the data, storing it in
the database with load wise data analysis daily and monthly basis with
Graphical User Interface (GUI).
The challenge of energy shortages requires an optimized solution to demandside consumer issues. Energy demand factors contribute to the implementation of variable tariff’s and reward consumer’s electricity usage during
off-hours rather than during peak hours. In addition, the surge in tariffs
iiiand price volatility emphasize the need to carefully schedule the operation
of large devices to minimize power consumption. In this task, a genetic algorithm is used to find the optimal load schedule that minimizes the cost
spent on power according to considerations such as user comfort, maximum allowable demand, load characteristic’s, environmental factors and
so on. Further, this work will focus on testing the Binary Backtracking
Search and Artificial Bee Colony algorithms against the Binary Particle
Swarm algorithm benchmark to find the optimal load scheduling in terms
of complexity, cost optimization, and execution time.
On the other hand, the challenge in energy management lays focus on the
efficient utilization of available power sources without limiting power consumption. Above issue seeks for design and development of an intelligent
system with day-ahead planning and prior forecasting of energy availability. Hence there is a need for accurate energy prediction technique to
minimize imbalance in the power sector. In this context, an Intelligent
Smart Energy Management Systems (ISEMS) is proposed to handle energy demand in a smart grid environment with penetration of renewable
sources. The proposed scheme compares several prediction models for accurate forecasting of energy for hourly and day-ahead planning. Based
on the predicted information, ISEMS negotiates the available power and
dispatch the control action depending on the consumer assigned priority
for an appliance. Several energy prediction models are evaluated and it is
found that the Particle Swarm Optimization (PSO) based Support Vector
Regressors (SVR) outperforms over other prediction models in terms of
performance accuracy.
Description
Keywords
Department of Electrical and Electronics Engineering, Demand Response (DR), Demand Side Management (DSM), Internet of Things (IoT), Particle Swarm Optimization (PSO), Renewable Energy sources(REs), Smart Energy Management Systems (SEMS), Smart Grid (SG), Time of Use (ToU), ZigBee