475 research outputs found
A Review on Energy Consumption Optimization Techniques in IoT Based Smart Building Environments
In recent years, due to the unnecessary wastage of electrical energy in
residential buildings, the requirement of energy optimization and user comfort
has gained vital importance. In the literature, various techniques have been
proposed addressing the energy optimization problem. The goal of each technique
was to maintain a balance between user comfort and energy requirements such
that the user can achieve the desired comfort level with the minimum amount of
energy consumption. Researchers have addressed the issue with the help of
different optimization algorithms and variations in the parameters to reduce
energy consumption. To the best of our knowledge, this problem is not solved
yet due to its challenging nature. The gap in the literature is due to the
advancements in the technology and drawbacks of the optimization algorithms and
the introduction of different new optimization algorithms. Further, many newly
proposed optimization algorithms which have produced better accuracy on the
benchmark instances but have not been applied yet for the optimization of
energy consumption in smart homes. In this paper, we have carried out a
detailed literature review of the techniques used for the optimization of
energy consumption and scheduling in smart homes. The detailed discussion has
been carried out on different factors contributing towards thermal comfort,
visual comfort, and air quality comfort. We have also reviewed the fog and edge
computing techniques used in smart homes
AI Applications to Power Systems
Today, the flow of electricity is bidirectional, and not all electricity is centrally produced in large power plants. With the growing emergence of prosumers and microgrids, the amount of electricity produced by sources other than large, traditional power plants is ever-increasing. These alternative sources include photovoltaic (PV), wind turbine (WT), geothermal, and biomass renewable generation plants. Some renewable energy resources (solar PV and wind turbine generation) are highly dependent on natural processes and parameters (wind speed, wind direction, temperature, solar irradiation, humidity, etc.). Thus, the outputs are so stochastic in nature. New data-science-inspired real-time solutions are needed in order to co-develop digital twins of large intermittent renewable plants whose services can be globally delivered
Hybrid Metaheuristics for Classification Problems
High accuracy and short amount of time are required for the solutions of many classification problems such as real-world classification problems. Due to the practical importance of many classification problems (such as crime detection), many algorithms have been developed to tackle them. For years, metaheuristics (MHs) have been successfully used for solving classification problems. Recently, hybrid metaheuristics have been successfully used for many real-world optimization problems such as flight scheduling and load balancing in telecommunication networks. This chapter investigates the use of this new interdisciplinary field for classification problems. Moreover, it demonstrates the forms of metaheuristics hybridization as well as designing a new hybrid metaheuristic
Decision support for participation in electricity markets considering the transaction of services and electricity at the local level
[EN] The growing concerns regarding the lack of fossil fuels, their costs, and their
impact on the environment have led governmental institutions to launch energy
policies that promote the increasing installation of technologies that use
renewable energy sources to generate energy. The increasing penetration of
renewable energy sources brings a great fluctuation on the generation side,
which strongly affects the power and energy system management. The control of
this system is moving from hierarchical and central to a smart and distributed
approach. The system operators are nowadays starting to consider the final end users (consumers and prosumers) as a part of the solution in power system
operation activities. In this sense, the end-users are changing their behavior from
passive to active players. The role of aggregators is essential in order to empower
the end-users, also contributing to those behavior changes. Although in several
countries aggregators are legally recognized as an entity of the power and energy
system, its role being mainly centered on representing end-users in wholesale
market participation.
This work contributes to the advancement of the state-of-the-art with
models that enable the active involvement of the end-users in electricity markets
in order to become key participants in the management of power and energy
systems. Aggregators are expected to play an essential role in these models,
making the connection between the residential end-users, electricity markets,
and network operators. Thus, this work focuses on providing solutions to a wide
variety of challenges faced by aggregators.
The main results of this work include the developed models to enable
consumers and prosumers participation in electricity markets and power and
energy systems management. The proposed decision support models consider
demand-side management applications, local electricity market models,
electricity portfolio management, and local ancillary services.
The proposed models are validated through case studies based on real data.
The used scenarios allow a comprehensive validation of the models from
different perspectives, namely end-users, aggregators, and network operators.
The considered case studies were carefully selected to demonstrate the characteristics of each model, and to demonstrate how each of them contributes
to answering the research questions defined to this work.[ES] La creciente preocupación por la escasez de combustibles fósiles, sus costos
y su impacto en el medio ambiente ha llevado a las instituciones
gubernamentales a lanzar políticas energéticas que promuevan la creciente
instalación de tecnologías que utilizan fuentes de energía renovables para
generar energía. La creciente penetración de las fuentes de energía renovable trae
consigo una gran fluctuación en el lado de la generación, lo que afecta
fuertemente la gestión del sistema de potencia y energía. El control de este
sistema está pasando de un enfoque jerárquico y central a un enfoque inteligente
y distribuido. Actualmente, los operadores del sistema están comenzando a
considerar a los usuarios finales (consumidores y prosumidores) como parte de
la solución en las actividades de operación del sistema eléctrico. En este sentido,
los usuarios finales están cambiando su comportamiento de jugadores pasivos a
jugadores activos. El papel de los agregadores es esencial para empoderar a los
usuarios finales, contribuyendo también a esos cambios de comportamiento.
Aunque en varios países los agregadores están legalmente reconocidos como una
entidad del sistema eléctrico y energético, su papel se centra principalmente en
representar a los usuarios finales en la participación del mercado mayorista.
Este trabajo contribuye al avance del estado del arte con modelos que
permiten la participación activa de los usuarios finales en los mercados eléctricos
para convertirse en participantes clave en la gestión de los sistemas de potencia
y energía. Se espera que los agregadores desempeñen un papel esencial en estos
modelos, haciendo la conexión entre los usuarios finales residenciales, los
mercados de electricidad y los operadores de red. Por lo tanto, este trabajo se
enfoca en brindar soluciones a una amplia variedad de desafíos que enfrentan los
agregadores.
Los principales resultados de este trabajo incluyen los modelos
desarrollados para permitir la participación de los consumidores y prosumidores
en los mercados eléctricos y la gestión de los sistemas de potencia y energía. Los
modelos de soporte de decisiones propuestos consideran aplicaciones de gestión
del lado de la demanda, modelos de mercado eléctrico local, gestión de cartera
de electricidad y servicios auxiliares locales.
Los modelos propuestos son validan mediante estudios de casos basados en
datos reales. Los escenarios utilizados permiten una validación integral de los
modelos desde diferentes perspectivas, a saber, usuarios finales, agregadores y
operadores de red. Los casos de estudio considerados fueron cuidadosamente
seleccionados para demostrar las características de cada modelo y demostrar
cómo cada uno de ellos contribuye a responder las preguntas de investigación
definidas para este trabajo
Proposing Optimus Scheduler Algorithm for Virtual Machine Placement Within a Data Center
With the evolution of the Internet, we are witnessing the birth of an increasing number of applications that rely on the network; what was previously executed on the user's computers as stand-alone programs has been redesigned to be executed on servers with permanent connections to the Internet, making the information available from any device that has network access. Instead of buying a copy of a program, users can now pay to obtain access to it through the network, which is one of the models of cloud computing, Software as a Service (SaaS). The continuous growth of Internet bandwidth has also given rise to new multimedia applications, such as social networks and video over the Internet; and to complete this new paradigm, mobile platforms provide the ubiquity of information that allows people to stay connected. Service providers may own servers and data centers or, alternatively, may contract infrastructure providers that use economies of scale to offer access to servers as a service in the cloud computing model, i.e., Infrastructure as a Service (IaaS). As users become more dependent on cloud services and mobile platforms increase the ubiquity of the cloud, the quality of service becomes increasingly important. A fundamental metric that defines the quality of service is the delay of the information as it travels between the user computers and the servers, and between the servers themselves. Along with the quality of service and the costs, the energy consumption and the CO2 emissions are fundamental considerations in regard to planning cloud computing networks. In this research work, an Optimus Scheduler algorithm to be proposed for Add, Remove or Resize an application by using Tabu Search Algorithm
A intelligent particle swarm optimization for short-term traffic flow forecasting using on-road sensor systems
On-road sensor systems installed on freeways are used to capture traffic flow data for short-term traffic flow predictors for traffic management, in order to reduce traffic congestion and improve vehicular mobility. This paper intends to tackle the impractical time-invariant assumptions which underlie the methods currently used to develop short-term traffic flow predictors: i) the characteristics of current data captured by on-road sensors are assumed to be time-invariant with respect to those of the historical data, which is used to developed short-term traffic flow predictors; and ii) the configuration of the on-road sensor systems is assumed to be time-invariant. In fact, both assumptions are impractical in the real world, as the current traffic flow characteristics can be very different from the historical ones, and also the on-road sensor systems are time-varying in nature due to damaged sensors or component wear. Therefore, misleading forecasting results are likely to be produced when short-term traffic flow predictors are designed using these two time-invariant assumptions. To tackle these time-invariant assumptions, an intelligent particle swarm optimization algorithm, namely IPSO, is proposed to develop short-term traffic flow predictors by integrating the mechanisms of particle swarm optimization, neural network and fuzzy inference system, in order to adapt to the time-varying traffic flow characteristics and the time-varying configurations of the on-road sensor systems. The proposed IPSO was applied to forecast traffic flow conditions on a section of freeway in Western Australia, whose traffic flow information can be captured on-line by the on-road sensor system. These results clearly demonstrate the effectiveness of using the proposed IPSO for real-time traffic flow forecasting based on traffic flow data captured by on-road sensor systems
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