7 research outputs found

    Fuzzy linguistic knowledge based behavior extraction for building energy management systems

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    An energy-efficient smart comfort sensing system based on the IEEE 1451 standard for green buildings

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    In building automation, comfort is an important aspect, and the real-time measurement of comfort is notoriously complicated. In this paper, we have developed a wireless, smart comfort sensing system. The important parameters in designing the prevalent measurement of comfort systems, such as portability, power consumption, reliability, and system cost, were considered. To achieve the target design goals, the communication module, sensor node, and sink node were developed based on the IEEE1451 standard. Electrochemical and semiconductor sensors were considered for the development of the sensor array, and the results of both technologies were compared. The sensor and sink nodes were implemented using the ATMega88 microcontroller. Microsoft Visual Studio 2013 preview was used to create the graphical user interface in C#. The sensors were calibrated after the signal processing circuit to ensure that the standard accuracy of the sensor was achieved. This paper presents detailed design solutions to problems that existed in the literature.http://ieeexplore.ieee.org/xpl/RecentIssue.jsp?punumber=7361hj201

    Quantitative Evaluation of Residential Virtual Energy Storage in Comparison to Battery Energy Storage: A Cyber-Physical Systems

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    Virtual energy storage (VES) refers to an indirect method of storing energy without using a battery. In a residential setting, VES uses the building structure interior appurtenances together with its physical properties as an energy storage device. It represents a methodology in energy storage mechanisms to help with load management in residential microgrids. It is an approach that is critical to the necessary paradigm shift from the less flexible and more costly demand response energy market of the present to the more flexible and potentially less costly availability response energy market of the future. This work quantifies VES monetary cost-savings potential for residential homes, as part of an effort to develop smart systems (using power sensors, and simple computation and control mechanisms) to assist individuals in making decisions about energy use that will save energy and, consequently, electricity costs. The project also compares the cost-effectiveness of VES to that of battery energy storage (BES)脗驴currently the more traditional and widely-advocated-for approach to energy storage for load management. In addition, this project devises a load management framework for a residential microgrid, where strategies that enable energy and cost savings for both utilities and consumers are tested. To make a home act as its own storage device, we need to intelligently control its heating, ventilation, and air conditioning (HVAC) system. Through this control, we can harness the house\u27s thermal storage abilities by methods such as preheating or precooling the house (with due consideration to user comfort) during periods when energy is less expensive so that this heat or coolness will be retained during higher-cost periods. A well-insulated residential home equipped with sensing technology and intermittent generation resources will be utilized as a testbed for this project. Using a testbed is advantageous as it provides realistic results as well as a platform where behavior of the home can be learned. By combining modeling techniques with test results from a live testbed, cost-saving solutions can be simulated and later evaluated. This work provides a means to determine how to reduce peak demand and save costs for both utilities and consumers by changing consumer behavior, while respecting consumer thermal comfort preferences. Additionally, by creating the aforementioned modeling framework, we provide the load management community with tools by which they can readily test their optimization algorithms. By so doing, more efficient algorithms can be developed (potentially leading to increased residential energy efficiency)

    Occupancy estimation and people flow prediction in smart environments

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    Two related problems have been analysed. Inthe one hand, the problem of detecting people by using indoor climate monitoring infrastructure is analysed, while on the other hand, predicting the amount of people in one space based on some criteria is studied. These two problems are grouped in the Ambient Intelligence (AmI) research field. In the smart building and cities (SBC) are avarious research paths are gaining increasing attention, especially with the advances in the Internet of Things (IoT) paradigm and the Big Data analysis. Some hot topics in this research field include city security, surveillance, providing more efficient public services, event scheduling, etc. The analysed problems are introduced with the state of the art for each one, current research paths and possible limitations of the proposed methods are also mentioned. In the last section of this chapter some supervised learning algorithms used in this work are introduced and explained

    Advanced energy management strategies for HVAC systems in smart buildings

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    The efficacy of the energy management systems at dealing with energy consumption in buildings has been a topic with a growing interest in recent years due to the ever-increasing global energy demand and the large percentage of energy being currently used by buildings. The scale of this sector has attracted research effort with the objective of uncovering potential improvement avenues and materializing them with the help of recent technological advances that could be exploited to lower the energetic footprint of buildings. Specifically, in the area of heating, ventilating and air conditioning installations, the availability of large amounts of historical data in building management software suites makes possible the study of how resource-efficient these systems really are when entrusted with ensuring occupant comfort. Actually, recent reports have shown that there is a gap between the ideal operating performance and the performance achieved in practice. Accordingly, this thesis considers the research of novel energy management strategies for heating, ventilating and air conditioning installations in buildings, aimed at narrowing the performance gap by employing data-driven methods to increase their context awareness, allowing management systems to steer the operation towards higher efficiency. This includes the advancement of modeling methodologies capable of extracting actionable knowledge from historical building behavior databases, through load forecasting and equipment operational performance estimation supporting the identification of a building鈥檚 context and energetic needs, and the development of a generalizable multi-objective optimization strategy aimed at meeting these needs while minimizing the consumption of energy. The experimental results obtained from the implementation of the developed methodologies show a significant potential for increasing energy efficiency of heating, ventilating and air conditioning systems while being sufficiently generic to support their usage in different installations having diverse equipment. In conclusion, a complete analysis and actuation framework was developed, implemented and validated by means of an experimental database acquired from a pilot plant during the research period of this thesis. The obtained results demonstrate the efficacy of the proposed standalone contributions, and as a whole represent a suitable solution for helping to increase the performance of heating, ventilating and air conditioning installations without affecting the comfort of their occupants.L鈥檈fic脿cia dels sistemes de gesti贸 d鈥檈nergia per afrontar el consum d鈥檈nergia en edificis 茅s un tema que ha rebut un inter猫s en augment durant els darrers anys a causa de la creixent demanda global d鈥檈nergia i del gran percentatge d鈥檈nergia que n鈥檜tilitzen actualment els edificis. L鈥檈scala d鈥檃quest sector ha atret l'atenci贸 de nombrosa investigaci贸 amb l鈥檕bjectiu de descobrir possibles vies de millora i materialitzar-les amb l鈥檃juda de recents aven莽os tecnol貌gics que es podrien aprofitar per disminuir les necessitats energ猫tiques dels edificis. Concretament, en l鈥櫭爎ea d鈥檌nstal路lacions de calefacci贸, ventilaci贸 i climatitzaci贸, la disponibilitat de grans bases de dades hist貌riques als sistemes de gesti贸 d鈥檈dificis fa possible l鈥檈studi de com d'eficients s贸n realment aquests sistemes quan s鈥檈ncarreguen d'assegurar el confort dels seus ocupants. En realitat, informes recents indiquen que hi ha una difer猫ncia entre el rendiment operatiu ideal i el rendiment generalment assolit a la pr脿ctica. En conseq眉猫ncia, aquesta tesi considera la investigaci贸 de noves estrat猫gies de gesti贸 de l鈥檈nergia per a instal路lacions de calefacci贸, ventilaci贸 i climatitzaci贸 en edificis, destinades a reduir la difer猫ncia de rendiment mitjan莽ant l鈥櫭簊 de m猫todes basats en dades per tal d'augmentar el seu coneixement contextual, permetent als sistemes de gesti贸 dirigir l鈥檕peraci贸 cap a zones de treball amb un rendiment superior. Aix貌 inclou tant l鈥檃van莽 de metodologies de modelat capaces d鈥檈xtreure coneixement de bases de dades de comportaments hist貌rics d鈥檈dificis a trav茅s de la previsi贸 de c脿rregues de consum i l鈥檈stimaci贸 del rendiment operatiu dels equips que recolzin la identificaci贸 del context operatiu i de les necessitats energ猫tiques d鈥檜n edifici, tant com del desenvolupament d鈥檜na estrat猫gia d鈥檕ptimitzaci贸 multi-objectiu generalitzable per tal de minimitzar el consum d鈥檈nergia mentre es satisfan aquestes necessitats energ猫tiques. Els resultats experimentals obtinguts a partir de la implementaci贸 de les metodologies desenvolupades mostren un potencial important per augmentar l'efici猫ncia energ猫tica dels sistemes de climatitzaci贸, mentre que s贸n prou gen猫rics com per permetre el seu 煤s en diferents instal路lacions i suportant equips diversos. En conclusi贸, durant aquesta tesi es va desenvolupar, implementar i validar un marc d鈥檃n脿lisi i actuaci贸 complet mitjan莽ant una base de dades experimental adquirida en una planta pilot durant el per铆ode d鈥檌nvestigaci贸 de la tesi. Els resultats obtinguts demostren l鈥檈fic脿cia de les contribucions de manera individual i, en conjunt, representen una soluci贸 id貌nia per ajudar a augmentar el rendiment de les instal路lacions de climatitzaci贸 sense afectar el confort dels seus ocupantsPostprint (published version

    Advanced energy management strategies for HVAC systems in smart buildings

    Get PDF
    The efficacy of the energy management systems at dealing with energy consumption in buildings has been a topic with a growing interest in recent years due to the ever-increasing global energy demand and the large percentage of energy being currently used by buildings. The scale of this sector has attracted research effort with the objective of uncovering potential improvement avenues and materializing them with the help of recent technological advances that could be exploited to lower the energetic footprint of buildings. Specifically, in the area of heating, ventilating and air conditioning installations, the availability of large amounts of historical data in building management software suites makes possible the study of how resource-efficient these systems really are when entrusted with ensuring occupant comfort. Actually, recent reports have shown that there is a gap between the ideal operating performance and the performance achieved in practice. Accordingly, this thesis considers the research of novel energy management strategies for heating, ventilating and air conditioning installations in buildings, aimed at narrowing the performance gap by employing data-driven methods to increase their context awareness, allowing management systems to steer the operation towards higher efficiency. This includes the advancement of modeling methodologies capable of extracting actionable knowledge from historical building behavior databases, through load forecasting and equipment operational performance estimation supporting the identification of a building鈥檚 context and energetic needs, and the development of a generalizable multi-objective optimization strategy aimed at meeting these needs while minimizing the consumption of energy. The experimental results obtained from the implementation of the developed methodologies show a significant potential for increasing energy efficiency of heating, ventilating and air conditioning systems while being sufficiently generic to support their usage in different installations having diverse equipment. In conclusion, a complete analysis and actuation framework was developed, implemented and validated by means of an experimental database acquired from a pilot plant during the research period of this thesis. The obtained results demonstrate the efficacy of the proposed standalone contributions, and as a whole represent a suitable solution for helping to increase the performance of heating, ventilating and air conditioning installations without affecting the comfort of their occupants.L鈥檈fic脿cia dels sistemes de gesti贸 d鈥檈nergia per afrontar el consum d鈥檈nergia en edificis 茅s un tema que ha rebut un inter猫s en augment durant els darrers anys a causa de la creixent demanda global d鈥檈nergia i del gran percentatge d鈥檈nergia que n鈥檜tilitzen actualment els edificis. L鈥檈scala d鈥檃quest sector ha atret l'atenci贸 de nombrosa investigaci贸 amb l鈥檕bjectiu de descobrir possibles vies de millora i materialitzar-les amb l鈥檃juda de recents aven莽os tecnol貌gics que es podrien aprofitar per disminuir les necessitats energ猫tiques dels edificis. Concretament, en l鈥櫭爎ea d鈥檌nstal路lacions de calefacci贸, ventilaci贸 i climatitzaci贸, la disponibilitat de grans bases de dades hist貌riques als sistemes de gesti贸 d鈥檈dificis fa possible l鈥檈studi de com d'eficients s贸n realment aquests sistemes quan s鈥檈ncarreguen d'assegurar el confort dels seus ocupants. En realitat, informes recents indiquen que hi ha una difer猫ncia entre el rendiment operatiu ideal i el rendiment generalment assolit a la pr脿ctica. En conseq眉猫ncia, aquesta tesi considera la investigaci贸 de noves estrat猫gies de gesti贸 de l鈥檈nergia per a instal路lacions de calefacci贸, ventilaci贸 i climatitzaci贸 en edificis, destinades a reduir la difer猫ncia de rendiment mitjan莽ant l鈥櫭簊 de m猫todes basats en dades per tal d'augmentar el seu coneixement contextual, permetent als sistemes de gesti贸 dirigir l鈥檕peraci贸 cap a zones de treball amb un rendiment superior. Aix貌 inclou tant l鈥檃van莽 de metodologies de modelat capaces d鈥檈xtreure coneixement de bases de dades de comportaments hist貌rics d鈥檈dificis a trav茅s de la previsi贸 de c脿rregues de consum i l鈥檈stimaci贸 del rendiment operatiu dels equips que recolzin la identificaci贸 del context operatiu i de les necessitats energ猫tiques d鈥檜n edifici, tant com del desenvolupament d鈥檜na estrat猫gia d鈥檕ptimitzaci贸 multi-objectiu generalitzable per tal de minimitzar el consum d鈥檈nergia mentre es satisfan aquestes necessitats energ猫tiques. Els resultats experimentals obtinguts a partir de la implementaci贸 de les metodologies desenvolupades mostren un potencial important per augmentar l'efici猫ncia energ猫tica dels sistemes de climatitzaci贸, mentre que s贸n prou gen猫rics com per permetre el seu 煤s en diferents instal路lacions i suportant equips diversos. En conclusi贸, durant aquesta tesi es va desenvolupar, implementar i validar un marc d鈥檃n脿lisi i actuaci贸 complet mitjan莽ant una base de dades experimental adquirida en una planta pilot durant el per铆ode d鈥檌nvestigaci贸 de la tesi. Els resultats obtinguts demostren l鈥檈fic脿cia de les contribucions de manera individual i, en conjunt, representen una soluci贸 id貌nia per ajudar a augmentar el rendiment de les instal路lacions de climatitzaci贸 sense afectar el confort dels seus ocupant
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