cnn-rnn model
Predicting cognitive load in immersive driving scenarios with a hybrid CNN-RNN model
Khan, Mehshan Ahmed, Asadi, Houshyar, Qazani, Mohammad Reza Chalak, Arogbonlo, Adetokunbo, Nahavandi, Saeid, Lim, Chee Peng
One debatable issue in traffic safety research is that cognitive load from sec-ondary tasks reduces primary task performance, such as driving. Although physiological signals have been extensively used in driving-related research to assess cognitive load, only a few studies have specifically focused on high cognitive load scenarios. Most existing studies tend to examine moderate or low levels of cognitive load In this study, we adopted an auditory version of the n-back task of three levels as a cognitively loading secondary task while driving in a driving simulator. During the simultaneous execution of driving and the n-back task, we recorded fNIRS, eye-tracking, and driving behavior data to predict cognitive load at three different levels. To the best of our knowledge, this combination of data sources has never been used before. Un-like most previous studies that utilize binary classification of cognitive load and driving in conditions without traffic, our study involved three levels of cognitive load, with drivers operating in normal traffic conditions under low visibility, specifically during nighttime and rainy weather. We proposed a hybrid neural network combining a 1D Convolutional Neural Network and a Recurrent Neural Network to predict cognitive load. Our experimental re-sults demonstrate that the proposed model, with fewer parameters, increases accuracy from 99.82% to 99.99% using physiological data, and from 87.26% to 92.02% using driving behavior data alone. This significant improvement highlights the effectiveness of our hybrid neural network in accurately pre-dicting cognitive load during driving under challenging conditions.
- Oceania > Australia (0.04)
- Asia > Middle East > Saudi Arabia (0.04)
- Europe > France > Grand Est > Bas-Rhin > Strasbourg (0.04)
- Asia > Middle East > Oman > Al Batinah North Governorate > Sohar (0.04)
- Health & Medicine > Therapeutic Area (1.00)
- Information Technology > Security & Privacy (0.93)
- Transportation > Ground > Road (0.46)
A CNN-RNN Framework for Crop Yield Prediction
Khaki, Saeed, Wang, Lizhi, Archontoulis, Sotirios V.
Crop yield prediction is extremely challenging due to its dependence on multiple factors such as crop genotype, environmental factors, management practices, and their interactions. This paper presents a deep learning framework using convolutional neural networks (CNN) and recurrent neural networks (RNN) for crop yield prediction based on environmental data and management practices. The proposed CNN-RNN model, along with other popular methods such as random forest (RF), deep fully-connected neural networks (DFNN), and LASSO, was used to forecast corn and soybean yield across the entire Corn Belt (including 13 states) in the United States for years 2016, 2017, and 2018 using historical data. The new model achieved a root-mean-square-error (RMSE) 9% and 8% of their respective average yields, substantially outperforming all other methods that were tested. The CNN-RNN have three salient features that make it a potentially useful method for other crop yield prediction studies. (1) The CNN-RNN model was designed to capture the time dependencies of environmental factors and the genetic improvement of seeds over time without having their genotype information. (2) The model demonstrated the capability to generalize the yield prediction to untested environments without significant drop in the prediction accuracy. (3) Coupled with the backpropagation method, the model could reveal the extent to which weather conditions, accuracy of weather predictions, soil conditions, and management practices were able to explain the variation in the crop yields.
- North America > United States > Iowa > Story County > Ames (0.04)
- South America > Brazil (0.04)
- South America > Argentina > Pampas > Buenos Aires F.D. > Buenos Aires (0.04)
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