Smart City Gnosys

Smart city article details

Title Exploring Spatial Patterns In Sensor Data For Humidity, Temperature, And Rssi Measurements
ID_Doc 25631
Authors Botero-Valencia J.; Martinez-Perez A.; Hernández-García R.; Castano-Londono L.
Year 2023
Published Data, 8, 5
DOI http://dx.doi.org/10.3390/data8050082
Abstract The Internet of Things (IoT) is one of the fastest-growing research areas in recent years and is strongly linked to the development of smart cities, smart homes, and factories. IoT can be defined as connecting devices, sensors, and physical objects that can collect and transmit data across a network, enabling increased automation and better decision-making. In several IoT applications, humidity and temperature are some of the most used variables for adjusting system configurations and understanding their performance because they are related to various physical processes, human comfort, manufacturing processes, and 3D printing, among other things. In addition, one of the biggest problems associated with IoT is the excessive production of data, so it is necessary to develop methodologies to optimize the process of collecting information. This work presents a new dataset comprising almost 55 million values of temperature, relative humidity, and RSSI (Received Signal Strength Indicator) collected in two indoor spaces for longer than 3915 h at 10 s intervals. For each experiment, we captured the information from 13 previously calibrated sensors suspended from the ceiling at the same height and with a known relative position. The proposed dataset aims to contribute a benchmark for evaluating indoor temperature and humidity-controlled systems. The collected data allow the validation and improvement of the acquisition process for IoT applications. Data Set: 10.17605/OSF.IO/ZBN8W Data Set License: CC BY 4.0 © 2023 by the authors.
Author Keywords indoor climate; Internet of Things (IoT); relative humidity; RSSI; temperature


Similar Articles


Id Similarity Authors Title Published
24059 View0.863Sudhakar K.; Lurdhumary J.; Bathrinath S.; Howard E.; Vijayakumar G.N.S.; Anusuya M.; Robin C.R.R.Enhancing Urban Iot Temperature Sensing Accuracy Through Machine Learning-Driven Dynamic VentilationAIP Conference Proceedings, 3193, 1 (2024)
36050 View0.859Samikwa E.; Schärer J.; Braun T.; Di Maio A.Machine Learning-Based Energy Optimisation In Smart City Internet Of ThingsProceedings of the International Symposium on Mobile Ad Hoc Networking and Computing (MobiHoc) (2023)
31255 View0.858Khatouni A.S.; Bauer M.; Lutfiyya H.Indoor Temperature Characterization And Its Implication On Power Consumption In A Campus Building2020 7th International Conference on Internet of Things: Systems, Management and Security, IOTSMS 2020 (2020)
3705 View0.856Sethupatu Bala R.; Hosseinzadeh S.; Sadeghineko F.; Thomson C.S.; Emmanuel R.A Portable Non-Motorized Smart Iot Weather Station Platform For Urban Thermal Comfort StudiesFuture Internet, 17, 5 (2025)
17174 View0.851Santos D.; Mataloto B.; Ferreira J.C.Data Center Environment Monitoring SystemACM International Conference Proceeding Series (2019)