Smart Buildings, Smart Communities and Demand Response. Группа авторов

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it is foreseen that a high penetration of RES, given their minimal operational expenses and environmental advantages, should be reflected in the time slots of low costs and consumer prices. In this way, all consumers will be provided with a clear roadmap and the necessary motivational factors in order to adjust our consumption when possible and take advantage of electric energy availability from clean resources.

       Who is this book for?

      This book focuses on near-zero energy buildings (NZEBs), smart communities and microgrids. Therefore, on one hand, it would be valuable for experts, professionals and postgraduates with an interest in (1) highly efficient buildings and communities; (2) smart monitoring systems; and (3) building energy modeling. On the other hand, the book would be beneficial for professionals with an interest in building or community level power predictions and optimization, as well as about how such tools and techniques can be utilized to evaluate DR at the building and/or district level.

       Structure

      Firstly, a comprehensive approach for evaluating the performance of industrial and residential smart energy buildings/NZEBs is presented. A detailed audit of construction characteristics, installed systems and controls is conducted and presented. Subsequently, holistic data from advanced metering and sensor equipment are explored to verify energy consumption and actual building energy performance. Dynamic energy models are developed, validated and tested to explore key aspects of the operational behavior of buildings and systems, and draw essential knowledge about their performance. Consumption data based on real measurements is compared, on one hand, with dynamic building model simulation results and on the other hand, with the initial annual energy consumption, obtained via the building’s energy efficiency certification scheme prior to construction. Findings are explored to address the actual performance gap, reflect on the limitations of each approach and highlight important conclusions.

      Thirdly, the book describes how DR can be applied at the community level by exploiting predictions of day-ahead consumption and/or production and load shifting. The benefits of this approach are evaluated in terms of the economic savings based on a flat versus ToU tariff and an RTP scheme. The reliable prediction of power consumption and/or production 24 hours ahead is performed using artificial neural network modeling, whereas load shifting optimization is conducted using a genetic algorithm dual-objective optimization algorithm.

      In Chapter 2, the smart and zero energy building facilities used as case studies for evaluating DR at the building and the community levels are presented.

      Chapter 3 provides a thorough analysis of the performance of residential and industrial buildings with the aid of measurements and how they can be utilized for building energy modeling and validation purposes.

      Chapter 4 presents a newly developed approach for optimizing the operation of HVAC systems from a DR perspective.

      Chapter 5 presents a novel approach for the community level prediction and optimization in a DR setting.

      Finally, the overall conclusions and recommendations arising from the findings of this research are presented.

       Acknowledgments

      The editors express their deepest appreciation to all the authors for their contribution and to the European Commission, for allocating the funds in order for the Smart GEMS project to be implemented. Special thanks are owed to Dr. Cristina Cristalli, Head of Research for Innovation in the Loccioni Group and to the Loccioni Group for providing access and support for research activities in the framework of Smart GEMS project to be conducted in their industrial high-end facilities.

      Nikos KAMPELIS

      September 2020

      Nomenclature

       Acronyms

AC Alternating Current
AMI Advanced Metering Infrastructure
ANN Artificial Neural Network
ARC Aggregators or Retail Customers
AS Ancillary Services
BEMS Building Energy Management System
biPV Building-Integrated PhotoVoltaic
CHP Cogeneration of Heat and Power
CO2-eq Carbon Dioxide Equivalent Emissions
COP Coefficient Of Performance
CPP Critical Peak Pricing
CSP Curtailment Service Provider
Coefficient of Variance
DA Day Ahead
DARTP Day-Ahead Real-Time Pricing
DC Direct Current
DEMS District Energy Management Systems
DER Distributed Energy Resources
DG Diesel Generator
DHW Domestic Hot Water
DR Demand Response
DRP Demand Response Providers
DSM Demand Side Management
DSO Distribution System Operator

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