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ann model  (MathWorks Inc)


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    Structured Review

    MathWorks Inc ann model
    Sunflower seed yield prediction steps using <t>ANN,</t> <t>ANFIS,</t> and GEP models.
    Ann Model, supplied by MathWorks Inc, used in various techniques. Bioz Stars score: 96/100, based on 1118 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
    https://www.bioz.com/result/ann model/product/MathWorks Inc
    Average 96 stars, based on 1118 article reviews
    ann model - by Bioz Stars, 2026-04
    96/100 stars

    Images

    1) Product Images from "Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments"

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    Journal: PLOS One

    doi: 10.1371/journal.pone.0319331

    Sunflower seed yield prediction steps using ANN, ANFIS, and GEP models.
    Figure Legend Snippet: Sunflower seed yield prediction steps using ANN, ANFIS, and GEP models.

    Techniques Used:

    Evaluating the efficacy of three models  (ANN,   ANFIS,  and GEP) to predict sunflower grain yield under normal and salt stress.
    Figure Legend Snippet: Evaluating the efficacy of three models (ANN, ANFIS, and GEP) to predict sunflower grain yield under normal and salt stress.

    Techniques Used:

    Comparison of the accuracy evaluation statistics of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.
    Figure Legend Snippet: Comparison of the accuracy evaluation statistics of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Techniques Used: Comparison

    Violin diagrams of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.
    Figure Legend Snippet: Violin diagrams of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Techniques Used:

    Taylor diagrams to compare the performance of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.
    Figure Legend Snippet: Taylor diagrams to compare the performance of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Techniques Used:



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    Image Search Results


    Sunflower seed yield prediction steps using ANN, ANFIS, and GEP models.

    Journal: PLOS One

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    doi: 10.1371/journal.pone.0319331

    Figure Lengend Snippet: Sunflower seed yield prediction steps using ANN, ANFIS, and GEP models.

    Article Snippet: Training of the ANFIS model continued until the MSE fell below 0.001 or a maximum of 1,000 epochs was reached, similar to the ANN model. MATLAB’s Fuzzy Logic Toolbox was used to implement the ANFIS model. Every fuzzy system includes three main parts: fuzzifying the data by defining the membership function, creating a connection between the input and output by means of a series of rules (if-then), and gathering the results of the system and non-fuzzification.

    Techniques:

    Evaluating the efficacy of three models  (ANN,   ANFIS,  and GEP) to predict sunflower grain yield under normal and salt stress.

    Journal: PLOS One

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    doi: 10.1371/journal.pone.0319331

    Figure Lengend Snippet: Evaluating the efficacy of three models (ANN, ANFIS, and GEP) to predict sunflower grain yield under normal and salt stress.

    Article Snippet: Training of the ANFIS model continued until the MSE fell below 0.001 or a maximum of 1,000 epochs was reached, similar to the ANN model. MATLAB’s Fuzzy Logic Toolbox was used to implement the ANFIS model. Every fuzzy system includes three main parts: fuzzifying the data by defining the membership function, creating a connection between the input and output by means of a series of rules (if-then), and gathering the results of the system and non-fuzzification.

    Techniques:

    Comparison of the accuracy evaluation statistics of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Journal: PLOS One

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    doi: 10.1371/journal.pone.0319331

    Figure Lengend Snippet: Comparison of the accuracy evaluation statistics of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Article Snippet: Training of the ANFIS model continued until the MSE fell below 0.001 or a maximum of 1,000 epochs was reached, similar to the ANN model. MATLAB’s Fuzzy Logic Toolbox was used to implement the ANFIS model. Every fuzzy system includes three main parts: fuzzifying the data by defining the membership function, creating a connection between the input and output by means of a series of rules (if-then), and gathering the results of the system and non-fuzzification.

    Techniques: Comparison

    Violin diagrams of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Journal: PLOS One

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    doi: 10.1371/journal.pone.0319331

    Figure Lengend Snippet: Violin diagrams of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Article Snippet: Training of the ANFIS model continued until the MSE fell below 0.001 or a maximum of 1,000 epochs was reached, similar to the ANN model. MATLAB’s Fuzzy Logic Toolbox was used to implement the ANFIS model. Every fuzzy system includes three main parts: fuzzifying the data by defining the membership function, creating a connection between the input and output by means of a series of rules (if-then), and gathering the results of the system and non-fuzzification.

    Techniques:

    Taylor diagrams to compare the performance of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Journal: PLOS One

    Article Title: Advanced computational approaches for predicting sunflower yield: Insights from ANN, ANFIS, and GEP in normal and salinity stress environments

    doi: 10.1371/journal.pone.0319331

    Figure Lengend Snippet: Taylor diagrams to compare the performance of models (ANN, ANFIS, and GEP) to predict the yield of sunflower grains in the test stage: (a) Normal conditions and (b) Salt stress conditions.

    Article Snippet: Training of the ANFIS model continued until the MSE fell below 0.001 or a maximum of 1,000 epochs was reached, similar to the ANN model. MATLAB’s Fuzzy Logic Toolbox was used to implement the ANFIS model. Every fuzzy system includes three main parts: fuzzifying the data by defining the membership function, creating a connection between the input and output by means of a series of rules (if-then), and gathering the results of the system and non-fuzzification.

    Techniques: