DESIGN AND IMPLEMENTATION OF ENERGY MANAGEMENT SYSTEM FOR BUILDINGS
Proceeding: The Fifth International Conference on Technological Advances in Electrical, Electronics and Computer Engineering (TAEECE)Publication Date: 2018-07-05
Authors : Sudad J Ashaj Ergun Erçelebi;
Page : 23-28
Keywords : Smart Buildings; Environment sensor; temperature monitoring; humidity monitoring; Raspberry PI;
Abstract
Collecting data and monitoring from the related remote sensing activates perform a significant role for records the variants of environmental as a function of time by using Raspberry PI in green buildings. The main goal of this project is to develop a data acquisition system (DAQ) for monitoring the measurements of temperature and the humidity in order to extend this functionality for developing multipurpose DAQ and controlling system. In this work we have utilizes the digital sensors which have been connecting to I2C (Inter-Integrated Circuit) bus circuits with programs. The controlling units or analog to digital circuits translate the relative the analog data of temperature and humidity that sensed by the sensors to be a digital signal, after that, the client transmits these data to the server and then the data are going to be processing by the computers. The programmed interface system has been implemented by used Raspberry PI rather than PC that make it possible for users to manage all parameters of operation at high speed and low cost. The DAQ system can be operates either as standalone system or to work with PC. The monitoring and the recording system should be pre-loaded with online software such as Linux to be able to get the appropriate measurements.
Other Latest Articles
- IMAGE PROCESSING BASED ANTI-SLEEP ALARM SYSTEM FOR DROWSY DRIVERS
- MULTI-KEYWORD SEARCH EMPLOYING IDENTITY-BASED ENCRYPTION TECHNIQUE (MKS-IDE)
- PERFORMANCE EVALUATION OF UNDERWATER ACOUSTIC COMMUNICATION USING TRIGONOMETRIC CHIRP MODULATION
- DESIGN OF MODULAR MULTI-LEVEL CONVERTER AND PERMANENT MAGNET SYNCHRONOUS GENERATOR-BASED WIND ENERGY CONVERSION SYSTEM
- Abnormal Event Detection in Video using Appearance and Motion Information
Last modified: 2018-09-22 23:33:02