1. Application of artificial neural networks to the simulation of a Dedicated Outdoor Air System (DOAS)
- Author
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Luigi Schibuola, Marco Pittarello, Massimiliano Scarpa, and Chiara Tambani
- Subjects
Flexibility (engineering) ,Artificial neural network ,business.industry ,Computer science ,020209 energy ,Artificial Neural Networks, HVAC components, Tables of performance ,Tables of performance ,Frame (networking) ,HVAC components ,Control engineering ,Context (language use) ,02 engineering and technology ,Dedicated outdoor air system ,Identification (information) ,Air conditioning ,HVAC ,0202 electrical engineering, electronic engineering, information engineering ,business ,Artificial Neural Networks - Abstract
Tables of performance of installed HVAC (Heating, Ventilation and Air Conditioning) devices are important in the development of consistent building energy audits and appropriate control strategies. However, given the possible complexity of HVAC devices and the need for the deployment to computational environments, tables of performance should be passed in a more complete and flexible format, compared with the current practices in the HVAC sector. In such a context, this paper describes the phases of development and application of Artificial Neural Networks (ANNs) aimed at the assessment of the performance of a Dedicated Outdoor Air System (DOAS). ANNs are well renowned because of their applications in many important fields such as autonomous driving systems, speech recognition, etc. However, they may be used also to calculate the output of complex phenomena (like the ones involved in HVAC components) and are characterized by a very flexible and comprehensive formulation which would be able to adapt to any HVAC component or system. In the frame of this study, three ANNs have been developed and tested, for the full description of the performance of a DOAS. The developed ANNs were trained by means of data coming from a proprietary software. The achieved ANNs showed robust and reliable behavior and ensure high accuracy (mean absolute errors usually below 0.1 K on temperatures and 0.3% on capacity and power) and flexibility. Moreover, in some cases, they may be used also for the identification of anomalous data present among the sets of training and validation data.
- Published
- 2018