India is an Agriculture based country and about 60% of the population depends on agriculture for their living. But there is a substantiable reduction in agricultural production has happened due to unstable climate conditions and global warming. Indian farmers are always lacking the support of advanced technologies for improving and maximizing their yield. If they get explicit information about soil type, nutrients, pH value, changes in climatic factors, previous year yield etc., they can optimize their work and yield. With the advancement of machine learning, big data analytics and cloud computing technologies, the climate and crop yield can be got predicted to the farmers. Prediction of yield in advance can help the farmers to take corrective decisions about fertilization, storage and marketing to increase their production and revenue. A huge number of studies have been conducted worldwide, on agriculture sector for the prediction of crop yield, plant diseases etc. This paper presents a brief study of different researches in India on crop yield prediction based on Machine Learning and deep learning. Most of the researchers used environmental parameters like temperature, rainfall and soil type as the main features for prediction. A number of machine learning algorithms are employed in this field and it is really a complex task to identify the best algorithm. The researchers tried to accurately predict the crop yield and thereby suggesting ways to improve production and efficient use of fertilizers.

1.
Supreetha A.
Shetty
,
T.
Padmashree
,
B. M.
Sagar
,
N. K.
Cauvery
, ”
Performance Analysis on Machine Learning Algorithms with Deep Learning Model for Crop Yield Prediction
”,
Conference paper, First Online
: 09 January
2021
.
2.
Sushila
Shidnal
,
Mrityunjaya V.
Latte
,
Ayush
Kapoor
, et al., “
Crop yield prediction: two-tiered machine learning model approach
”,
International Journal of Information Technology
, November
2019
.
3.
Ayush
Shah
,
Akash
Dubey
,
Vishesh
Hemnani
,
Divye
Gala
,
D. R.
Kalbande
, “
Smart Farming System: Crop Yield Prediction Using Regression Techniques
”,
Conference paper
, 21 April
2018
.
4.
Ekaansh
Khosla
,
Ramesh
Dharavath
,
Rashmi
Priya
Crop yield prediction using aggregated rainfall-based modular artificial neural networks and support vector regression
”,
Environment, Development and Sustainability
volume
22
, pages
5687
5708
(
2020
).
5.
Tanuja K.
Fegade
,
B. V.
Pawar
, “
Crop Prediction Using Artificial Neural Network and Support Vector Machine
”,
Conference paper
, First Online: 25 September 2019,
Part of the Advances in Intelligent Systems and Computing book series
(
AISC
, volume
1016
).
6.
B. K.
Zaied
,
M.
Rashid
,
M.
Nasrullah
,
B. S.
Bari
,
A. W.
Zularisam
,
L.
Singh
, et al., “
Prediction and optimization of biogas production from POME co-digestion in solar bioreactor using artificial neural network coupled with particle swarm optimization (ANN-PSO)
”,
Biomass Convers. Biorefinery
, vol.
10
, pp.
1
16
, Oct.
2020
.
7.
Manoj
Bhasin
,
G.P.S.
Raghava
,
Prediction of CTL epitopes using QM, SVM and ANN techniques
,
Vaccine
, Volume
22
, Issues
23–24
,
2004
, Pages
3195
3204
, ISSN 0264-410X, .
8.
A.
Kumar
,
S.
Sarkar
and
C.
Pradhan
, “
Recommendation System for Crop Identification and Pest Control Technique in Agriculture
,”
2019 International Conference on Communication and Signal Processing (ICCSP)
,
2019
, pp.
0185
0189
, .
9.
N. H.
Kulkarni
,
G. N.
Srinivasan
,
B. M.
Sagar
and
N. K.
Cauvery
, “
Improving Crop Productivity Through A Crop Recommendation System Using Ensembling Technique
,”
2018 3rd International Conference on Computational Systems and Information Technology for Sustainable Solutions (CSITSS)
,
2018
, pp.
114
119
, .
10.
N. R.
Prasad
,
N.R.
Patel
&
Abhishek
Danodia
, “
Yield Prediction In Cotton For Regional Level Using Random Forest Approach
”,
spatial information research
volume
29
, pages
195
206
(
2021
).
11.
Jeong
JH
,
Resop
JP
,
Mueller
ND
,
Fleisher
DH
,
Yun
K
,
Butler
EE
, et al. (
2016
)
Random Forests for Global and Regional Crop Yield Predictions.
12.
Hao
Tong
,
Zoran
Nikoloski
, ”
Machine learning approaches for crop improvement: Leveraging phenotypic and genotypic big data,Journal of Plant Physiology
”, Volume
257
,
2021
,
153354
, ISSN 0176-617, .
13.
Mamunur
Rashid
,
Bifta Sama
Bari
,
Yusri
Yusup
,
Mohamad Anuar
Kamaruddin
, and
Nuzhat
Khan
, “
A Comprehensive Review of Crop Yield Prediction Using Machine Learning Approaches With Special Emphasis on Palm Oil Yield Prediction
”,
Digital Object Identifier
, April 22,
2021
.
14.
Thomas
van Klompenburg
,
Ayalew
Kassahun
,
Cagatay
Catal
,
Crop yield prediction using machine learning: A systematic literature review
,
Computers and Electronics in Agriculture
, Volume
177
,
2020
,
105709
, ISSN 0168-1699, .
15.
S. Bangaru
Kamatchi
,
R.
Parvathi
,
Improvement of Crop Production Using Recommender System by Weather Forecasts
,
Procedia Computer Science
, Volume
165
,
2019
, Pages
724
732
, ISSN 1877-0509, .
16.
Kiran M.
Sabu
,
T.K. Manoj
Kumar
,
Predictive analytics in Agriculture: Forecasting prices of Arecanuts in Kerala
,
Procedia Computer Science
, Volume
171
,
2020
, Pages
699
708
, ISSN 1877-0509, .
17.
Janmejay
Pant
,
R.P.
Pant
,
Manoj Kumar
Singh
,
Devesh Pratap
Singh
,
Himanshu
Pant
,
Analysis of agricultural crop yield prediction using statistical techniques of machine learning
,
Materials Today: Proceedings
,
2021
, ISSN 22147853, .
18.
Tamil Selvi
M
,
Jaison
B
,
Adaptive Lemuria: A progressive future crop prediction algorithm using data mining
,
Sustainable Computing: Informatics and Systems
, Volume
31
,
2021
,
100577
, ISSN 2210-5379, .
19.
Abraham
Nesarani
,
Ramalakshmi
Ramar
,
Sivakumar
Pandian
,
An efficient approach for rice prediction from authenticated Block chain node using machine learning technique
,
Environmental Technology & Innovation
, Volume
20
,
2020
,
101064
, ISSN 2352-1864, .
20.
Benny
Antony
,
Prediction of the production of crops with respect to rainfall
,
Environmental Research
, Volume
202
,
2021
,
111624
, ISSN 0013-9351, .
21.
Pallavi
Kamath
,
Pallavi
Patil
,
Shrilatha
S
,
Sushma
,
Sowmya
S
,
Crop Yield Forecasting using Data Mining
,
Global Transitions Proceedings
,
2021
, ISSN 2666-285X, .
22.
G.
Prabakaran
,
D.
Vaithiyanathan
,
Madhavi
Ganesan
,
FPGA based effective agriculture productivity prediction system using fuzzy support vector machine
,
Mathematics and Computers in Simulation
, Volume
185
,
2021
, Pages
1
16
, ISSN 0378-4754, .
23.
P. S.
Nishant
,
P. Sai
Venkat
,
B. L.
Avinash
and
B.
Jabber
, “
Crop Yield Prediction based on Indian Agriculture using Machine Learning
,”
2020 International Conference for Emerging Technology (INCET)
,
2020
, pp.
1
4
, .
24.
Champaneri
M
,
Chachpara
D
,
Chandvidkar
C
,
Rathod
M.
Crop yield prediction using machine learning
.
International Journal of Science and Research.
2020
Apr;
4
:
1
4
.
25.
Shetty
SA
,
Padmashree
T
,
Sagar
BM
,
Cauvery
NK
. Performance analysis on machine learning algorithms with deep learning model for crop yield prediction.
InData Intelligence and Cognitive Informatics
2021
(pp.
5739
750
).
Springer, Singapore
.
26.
Pant
,
Janmejay
, et al. “
Analysis of agricultural crop yield prediction using statistical techniques of machine learning
.”
Materials Today: Proceedings
(
2021
).
27.
Kavita
M
,
Mathur
P.
Crop Yield Estimation in India Using Machine Learning
.
In2020 IEEE 5th International Conference on Computing Communication and Automation (ICCCA
)
2020
Oct 30 (pp.
220
224
).
IEEE
.
28.
Pandith
,
Vaishali
, et al. “
Performance evaluation of machine learning techniques for mustard crop yield prediction from soil analysis
.”
Journal of Scientific Research
64
.
2
(
2020
).
29.
Agarwal
,
Sonal
, and
Sandhya
Tarar
. “
a Hybrid Approach for Crop Yield Prediction Using Machine Learning and Deep Learning Algorithms
.”
Journal of Physics: Conference Series
. Vol.
1714
. No.
1
.
IOP Publishing
,
2021
.
30.
Kale
,
Shivani
S.
, and
Preeti S.
Patil
. “
A Machine Learning Approach to Predict Crop Yield and Success Rate
.”
2019 IEEE Pune Section International Conference (PuneCon
).
IEEE
,
2019
.
31.
Kodimalar
Palanivel
and
Chellammal
Surianarayanan
,
An Approach for Prediction of Crop Yield Using Machine Learning and Big Data Techniques
,
International Journal of Computer Engineering and Technology
10
(
3
),
2019
, pp.
110
118
.
32.
Meeradevi
and
H.
Salpekar
, “
Design and Implementation of Mobile Application for Crop Yield Prediction using Machine Learning
,”
2019 Global Conference for Advancement in Technology (GCAT)
,
2019
, pp.
1
6
, .
33.
Abbas
,
Farhat
, et al. “
Crop yield prediction through proximal sensing and machine learning algorithms
.”
Agronomy
10
.
7
(
2020
):
1046
.
34.
N.
Manjunathan
,
P.
Rajesh
,
E.
Thangadurai
,
A.
Suresh
. “
Crop Yield Prediction Using Linear Support Vector Machine
”.
European Journal of Molecular & Clinical Medicine
,
7
,
6
,
2020
,
2189
2195
.
35.
Bondre
,
Devdatta
A.
, and
Santosh
Mahagaonkar
. “
Prediction of crop yield and fertilizer recommendation using machine learning algorithms
.”
International Journal of Engineering Applied Sciences and Technology
4
.
5
(
2019
):
371
376
.
36.
Bhanumathi
,
S.
,
M.
Vineeth
, and
N.
Rohit
. “
Crop yield prediction and efficient use of fertilizers
.”
2019 International Conference on Communication and Signal Processing (ICCSP
).
IEEE
,
2019
.
37.
Mahajan
,
J.
,
Banal
,
K.
&
Mahajan
,
S.
Estimation of crop production using machine learning techniques: a case study of J&K
.
Int. j. inf. tecnol.
13
,
1441
1448
(
2021
).
38.
Elavarasan
,
D.
,
Durai Raj
Vincent, P.M.
Fuzzy deep learning-based crop yield prediction model for sustainable agronomical frameworks
.
Neural Comput & Applic
(
2021
).
39.
Suruliandi
,
G.
Mariammal
&
S.P.
Raja
(
2021
)
Crop prediction based on soil and environmental characteristics using feature selection techniques
,
Mathematical and Computer Modelling of Dynamical Systems
,
27
:
1
,
117
140
.
40.
Snehal S.
Dahikar
,
Sandeep V.
Rode
,
Pramod
Deshmukh
,
An Artificial Neural Network Approach for Agricultural Crop Yield Prediction Based on Various Parameters
,
International Journal of Advanced Research in Electronics and Communication Engineering (IJARECE)
Volume
4
, Issue
1
, January
2015
.
41.
Uddin
,
S.
,
Khan
,
A.
,
Hossain
,
M.
et al.
Comparing different supervised machine learning algorithms for disease prediction
.
BMC Med Inform Decis Mak
19
,
281
(
2019
).
42.
Yamashita
,
R.
,
Nishio
,
M.
,
Do
,
R.K.G.
et al.
Convolutional neural networks: an overview and application in radiology
.
Insights Imaging
9
,
611
629
(
2018
).
43.
A.
Shrestha
and
A.
Mahmood
, “
Review of Deep Learning Algorithms and Architectures
,” in
IEEE Access
, vol.
7
, pp.
53040
53065
,
2019
, .
44.
PS
,
Maya Gopal
. “
Performance evaluation of best feature subsets for crop yield prediction using machine learning algorithms
.”
Applied Artificial Intelligence
33
.
7
(
2019
):
621
642
.
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