Explicit Context Integrated Recurrent Neural Network for Sensor Data Applications
Rashmi Dutta Baruah, Mario Mu\~noz Organero

TL;DR
This paper introduces CiRNN, a novel recurrent neural network that explicitly incorporates contextual features to improve sensor data analysis, demonstrated by significant performance gains in engine health prognostics.
Contribution
The paper proposes a new CiRNN model that integrates explicit context into RNNs, enhancing predictive accuracy for sensor-based applications.
Findings
Improved RUL estimation accuracy by 39% (RMSE)
Enhanced performance by 87% on asymmetric scoring
Effective integration of contextual features in RNNs
Abstract
The development and progress in sensor, communication and computing technologies have led to data rich environments. In such environments, data can easily be acquired not only from the monitored entities but also from the surroundings where the entity is operating. The additional data that are available from the problem domain, which cannot be used independently for learning models, constitute context. Such context, if taken into account while learning, can potentially improve the performance of predictive models. Typically, the data from various sensors are present in the form of time series. Recurrent Neural Networks (RNNs) are preferred for such data as it can inherently handle temporal context. However, the conventional RNN models such as Elman RNN, Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) in their present form do not provide any mechanism to integrate explicit…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Target Tracking and Data Fusion in Sensor Networks · Atmospheric and Environmental Gas Dynamics
