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A Cognitive IoT Learning Models for Agro Climatic Estimation Aiding Farmers in Decision making

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15 juin 2024
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Figure 1:

Overall working Mechanism
Overall working Mechanism

Figure 2:

LSTM Structure
LSTM Structure

Figure 3:

Shows the all the phases of HHO
Shows the all the phases of HHO

Figure 4:

Convergence Assesment for the Various Optimization Strategies
Convergence Assesment for the Various Optimization Strategies

Performance Metrics Evaluation for the Proposed Architecture using Testing Datasets

Sl.no No of batches No of Epochs Precision (%) Recall(%) F1-Score
01 160 40 96.4% 96.1% 96.3%
02 160 80 96.43% 96.31% 96.3%
03 160 120 97.6% 97.41% 97.52%
04 160 160 97.53% 97.12% 97.32%
05 160 200 96.4% 96.3% 96.2%
06 160 240 96.3% 96.2% 96.1%
07 160 280 96.2% 96.1% 96.1%

Evaluation of Various Models for Predicting Crop Yield Productivity with Dropout Rate of 0_2

Algorithm Performance Metrics(%) recall Specificity F1-score
Accuracy Precision
LSTM 82.5 83.5 83.4 84.1 84.2
LSTM+PSO 86.3 86.2 85.8 86.1 85.4
LSTM+GA 86.6 86.4 86.2 87.3 85.9
LSTM+WOA 88.4 87.3 86.8 87.1 86.9
LSTM+SSO 88.5 89.1 88.8 88.4 88.5
LSTM+SHO 91.6 89.7 89.4 89.4 88.4

Benchmarking assessment of the various methodologies in identifying the crop-yield productivity with the drop-out=0_6

Algorithm Performance Metrics(%) recall Specificity F1-score
Accuracy Precision
LSTM 83.5 83.6 83.5 84.0 84
LSTM+PSO 88.3 86.3 85.9 86.0 85.4
LSTM+GA 88.3 86.5 86.3 87.4 85.9
LSTM+WOA 89.6 87.4 86.9 87.2 86.9
LSTM+SSO 89.9 89.0 88.9 88.5 88.5
LSTM+SHO 90.8 89.8 89.5 89.5 88.4
PROPOSED MODEL 97.6 96.9 96.7 96.6 96.5

Performance Metrics Evaluation for the Proposed Architecture using Verification/Validation Datasets

Sl.no No of batches No of Epochs Precision (%) Recall(%) F1-Score
01 170 40 96.5% 96.% 96.3%
02 170 80 96.45% 96.3% 96.3%
03 170 120 97.5% 96.9% 97.51%
04 170 160 97.3% 97.1% 97.31%
05 170 200 96.45% 96.30% 96.4%
06 170 240 96.30% 96.20% 96.20%
07 170 280 96.20% 96.10% 96.17%

Validation/Verification Accuracy Performance using the no of batches =160

Sl.no No of batches No of Epochs Validation /Verification Accuracy (%)
01 160 40 96.34%
02 160 80 97.6%
03 160 120 98.55%
04 160 160 98.35%
05 160 200 98.21%
06 160 240 98.3%
07 160 280 98.2%

Benchmarking assessment of the various methodologies in identifying the crop-yield productivity with the drop-out=0_4

Algorithm Performance Metrics(%) recall Specificity F1-score
Accuracy Precision
LSTM 84.3 83.6 83.5 83.5 84
LSTM+PSO 87.6 86.3 85.9 88.3 85.4
LSTM+GA 87.5 86.5 86.3 88.3 85.9
LSTM+WOA 89.5 87.4 86.9 89.6 86.9
LSTM+SSO 89.4 89.0 88.9 89.9 88.5
LSTM+SHA 91.0 89.8 89.5 90.8 88.4
PROPOSED MODEL 97.3 96.9 96.7 96.9 96.5

Performance Metrices

SL.NO Performance Measures Expression
1 Accuracy TP+TNTP+TN+FP+FN {{TP + TN} \over {TP + TN + FP + FN}}
2 Recall TPTP+FN×100 {{{\rm{TP}}} \over {{\rm{TP}} + {\rm{FN}}}}\, \times 100
3 Specificity TNTN+FP {{TN} \over {TN + FP}}
4 Precision TNTP+FP {{TN} \over {TP + FP}}
5 F1-Score 2.PrecisonRecallPrecison+Recall 2.{{Precison\, * \,{Recall}} \over {Precision\, + \, {Recall}}}

Training Accuracy Performance using the no of batches =160

Sl.no No of batches No of Epochs Testing Accuracy (%)
01 160 40 96.36%
02 160 80 97.65%
03 160 120 98.55%
04 160 160 98.35%
05 160 200 98.21%
06 160 240 98.3%
07 160 280 98.2%