TY - JOUR
T1 - SENDAI
T2 - A framework for joint reasoning about sensor data acquisition and sensor data analytics
AU - Jensen, Søren Kejser
AU - Kejser, Josefine
AU - Chiariotti, Federico
AU - Thomsen, Christian
AU - Kalør, Anders Ellersgaard
AU - Popovski, Petar
AU - Soret, Beatriz
AU - Pedersen, Torben Bach
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/9
Y1 - 2025/9
N2 - Sensors are increasingly being deployed to monitor critical infrastructure. However, as the number of sensors being deployed increases, so does the amount of sensor data that must be transmitted, stored, and analyzed. Thus, a significant number of methods have been proposed to improve sensor data acquisition and analytics. However, the proposed strategies and methods generally focus exclusively on either sensor data acquisition or analytics, thus ignoring the possible optimization that can be performed by taking a holistic view. To explore this opportunity, this paper provides an overview of sensor data acquisition and analytics and an analysis of two very different use cases, specifically monitoring wind turbines and measuring utility consumption using smart meters. Based on this analysis, the Framework for joint Sensory Data Acquisition and Analytics (SENDAI) is proposed, an integrated framework that models sensor data acquisition and analytics together, thus enabling holistic reasoning about sensor data acquisition and analytics. To demonstrate how the information in SENDAI can be used to reason about sensor data acquisition and analytics together, we show how sensor data acquisition can be optimized to respond efficiently to query workloads.
AB - Sensors are increasingly being deployed to monitor critical infrastructure. However, as the number of sensors being deployed increases, so does the amount of sensor data that must be transmitted, stored, and analyzed. Thus, a significant number of methods have been proposed to improve sensor data acquisition and analytics. However, the proposed strategies and methods generally focus exclusively on either sensor data acquisition or analytics, thus ignoring the possible optimization that can be performed by taking a holistic view. To explore this opportunity, this paper provides an overview of sensor data acquisition and analytics and an analysis of two very different use cases, specifically monitoring wind turbines and measuring utility consumption using smart meters. Based on this analysis, the Framework for joint Sensory Data Acquisition and Analytics (SENDAI) is proposed, an integrated framework that models sensor data acquisition and analytics together, thus enabling holistic reasoning about sensor data acquisition and analytics. To demonstrate how the information in SENDAI can be used to reason about sensor data acquisition and analytics together, we show how sensor data acquisition can be optimized to respond efficiently to query workloads.
KW - Framework
KW - Sampling
KW - Sensor data acquisition
KW - Sensor data analytics
KW - Smart meter
KW - Wind turbine
UR - https://www.scopus.com/pages/publications/105013521825
U2 - 10.1016/j.ic.2025.105335
DO - 10.1016/j.ic.2025.105335
M3 - Journal article
AN - SCOPUS:105013521825
SN - 0890-5401
VL - 306
JO - Information and Computation
JF - Information and Computation
M1 - 105335
ER -