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Erschienen in: The Journal of Supercomputing 4/2023

28.09.2022

The analysis of agricultural Internet of things product marketing by deep learning

verfasst von: Qiuyan Liu, Xuan Zhao, Kaihan Shi

Erschienen in: The Journal of Supercomputing | Ausgabe 4/2023

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Abstract

This study aims to promote the development of agricultural Internet of Things (AIoT) products. Although the general recurrent neural network (RNN) provides a more scientific approach for market forecasting, the accuracy of forecasting varies greatly because market data are affected by many factors. RNN is analyzed combined with the characteristics of IoT products. Through the analysis of the advantages and disadvantages of previous prediction models, long short-term memory (LSTM) is used to optimize the system model. Additionally, the optimized LSTM prediction model is used for hyper-parameter analysis of IoT marketing products. The mean absolute error of the developed LSTM prediction model reaches 303.3112, and the root-mean-square error reaches 397.1752. The prediction trend presented by the designed LSTM prediction model is consistent with the experimental data, which proves that the model has high prediction accuracy. The model is used to analyze future sales of Agricultural IoT (AIoT) products. The strength, weaknesses, opportunities and threats analysis method is used to analyze the AIoT product manufacturers. The AIoT product company has developed a marketing strategy that is in line with the company's development. This strategy promotes the development of IoT agricultural products and modern agricultural production.

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Literatur
1.
Zurück zum Zitat Liang TP, Liu YH (2018) Research landscape of business intelligence and big data analytics: a bibliometrics study. Expert Syst Appl 111:2–10CrossRef Liang TP, Liu YH (2018) Research landscape of business intelligence and big data analytics: a bibliometrics study. Expert Syst Appl 111:2–10CrossRef
2.
Zurück zum Zitat Torres R, Sidorova A, Jones MC (2018) Enabling firm performance through business intelligence and analytics: a dynamic capabilities perspective. Inf Manag 55(7):822–839CrossRef Torres R, Sidorova A, Jones MC (2018) Enabling firm performance through business intelligence and analytics: a dynamic capabilities perspective. Inf Manag 55(7):822–839CrossRef
3.
Zurück zum Zitat Jaklič J, Grublješič T, Popovič A (2018) The role of compatibility in predicting business intelligence and analytics use intentions. Int J Inf Manag 43:305–318CrossRef Jaklič J, Grublješič T, Popovič A (2018) The role of compatibility in predicting business intelligence and analytics use intentions. Int J Inf Manag 43:305–318CrossRef
4.
Zurück zum Zitat Anand JV (2020) A methodology of atmospheric deterioration forecasting and evaluation through data mining and business intelligence. J Ubiquitous Comput Commun Technol (UCCT) 2(02):79–87 Anand JV (2020) A methodology of atmospheric deterioration forecasting and evaluation through data mining and business intelligence. J Ubiquitous Comput Commun Technol (UCCT) 2(02):79–87
5.
Zurück zum Zitat Jin DH, Kim HJ (2018) Integrated understanding of big data, big data analysis, and business intelligence: a case study of logistics. Sustainability 10(10):3778CrossRef Jin DH, Kim HJ (2018) Integrated understanding of big data, big data analysis, and business intelligence: a case study of logistics. Sustainability 10(10):3778CrossRef
6.
Zurück zum Zitat Vashishtha G, Kumar R (2021) Autocorrelation energy and aquila optimizer for MED filtering of sound signal to detect bearing defect in Francis turbine. Meas Sci Technol 33(1):015006CrossRef Vashishtha G, Kumar R (2021) Autocorrelation energy and aquila optimizer for MED filtering of sound signal to detect bearing defect in Francis turbine. Meas Sci Technol 33(1):015006CrossRef
7.
Zurück zum Zitat Chauhan S, Vashishtha G, Kumar A (2021) A symbiosis of arithmetic optimizer with slime mould algorithm for improving global optimization and conventional design problem. J Supercomput 78:6234–6274CrossRef Chauhan S, Vashishtha G, Kumar A (2021) A symbiosis of arithmetic optimizer with slime mould algorithm for improving global optimization and conventional design problem. J Supercomput 78:6234–6274CrossRef
8.
Zurück zum Zitat Vashishtha G, Kumar R (2022) An amended grey wolf optimization with mutation strategy to diagnose bucket defects in Pelton wheel. Measurement 187:110272CrossRef Vashishtha G, Kumar R (2022) An amended grey wolf optimization with mutation strategy to diagnose bucket defects in Pelton wheel. Measurement 187:110272CrossRef
9.
Zurück zum Zitat Chauhan S, Singh M, Aggarwal AK (2021) Bearing defect identification via evolutionary algorithm with adaptive wavelet mutation strategy. Measurement 179:109445CrossRef Chauhan S, Singh M, Aggarwal AK (2021) Bearing defect identification via evolutionary algorithm with adaptive wavelet mutation strategy. Measurement 179:109445CrossRef
10.
Zurück zum Zitat Chi T, Chen M (2019) A frequency hopping method for spatial RFID/WiFi/Bluetooth scheduling in agricultural IoT. Wirel Netw 25(2):805–817CrossRef Chi T, Chen M (2019) A frequency hopping method for spatial RFID/WiFi/Bluetooth scheduling in agricultural IoT. Wirel Netw 25(2):805–817CrossRef
11.
Zurück zum Zitat Zhang X, Cao Z, Dong W (2020) Overview of Edge Computing in the Agricultural IoT: Key Technologies, Applications. Challenges IEEE Access 8:141748–141761CrossRef Zhang X, Cao Z, Dong W (2020) Overview of Edge Computing in the Agricultural IoT: Key Technologies, Applications. Challenges IEEE Access 8:141748–141761CrossRef
12.
Zurück zum Zitat Ma T, Sun CH, Li WY et al (2019) Design and implementation of trusted traceability system for agricultural products origin based on NB-IoT. J Agric Sci Technol (Beijing) 21(12):58–67 Ma T, Sun CH, Li WY et al (2019) Design and implementation of trusted traceability system for agricultural products origin based on NB-IoT. J Agric Sci Technol (Beijing) 21(12):58–67
13.
Zurück zum Zitat Elavarasan RM, Afridhis S, Vijayaraghavan RR et al (2020) SWOT analysis: a framework for comprehensive evaluation of drivers and barriers for renewable energy development in significant countries. Energy Rep 6:1838–1864CrossRef Elavarasan RM, Afridhis S, Vijayaraghavan RR et al (2020) SWOT analysis: a framework for comprehensive evaluation of drivers and barriers for renewable energy development in significant countries. Energy Rep 6:1838–1864CrossRef
14.
Zurück zum Zitat Hajizadeh Y (2019) Machine learning in oil and gas; a SWOT analysis approach. J Pet Sci Eng 176:661–663CrossRef Hajizadeh Y (2019) Machine learning in oil and gas; a SWOT analysis approach. J Pet Sci Eng 176:661–663CrossRef
15.
Zurück zum Zitat Namugenyi C, Nimmagadda SL, Reiners T (2019) Design of a SWOT analysis model and its evaluation in diverse digital business ecosystem contexts. Procedia Comput Sci 159:1145–1154CrossRef Namugenyi C, Nimmagadda SL, Reiners T (2019) Design of a SWOT analysis model and its evaluation in diverse digital business ecosystem contexts. Procedia Comput Sci 159:1145–1154CrossRef
16.
Zurück zum Zitat Irfan M, Hao Y, Panjwani MK et al (2020) Competitive assessment of South Asia’s wind power industry: SWOT analysis and value chain combined model. Energy Strategy Rev 32:100540CrossRef Irfan M, Hao Y, Panjwani MK et al (2020) Competitive assessment of South Asia’s wind power industry: SWOT analysis and value chain combined model. Energy Strategy Rev 32:100540CrossRef
17.
Zurück zum Zitat Phadermrod B, Crowder RM, Wills GB (2019) Importance-performance analysis based SWOT analysis. Int J Inf Manag 44:194–203CrossRef Phadermrod B, Crowder RM, Wills GB (2019) Importance-performance analysis based SWOT analysis. Int J Inf Manag 44:194–203CrossRef
18.
Zurück zum Zitat Sebt MV, Ghasemi SH, Mehrkian SS (2021) Predicting the number of customer transactions using stacked LSTM recurrent neural networks. Soc Netw Anal Min 11(1):1–13CrossRef Sebt MV, Ghasemi SH, Mehrkian SS (2021) Predicting the number of customer transactions using stacked LSTM recurrent neural networks. Soc Netw Anal Min 11(1):1–13CrossRef
19.
Zurück zum Zitat Waheeb W, Ghazali R (2019) A novel error-output recurrent neural network model for time series forecasting. Neural Comput Appl 32:9621–9647CrossRef Waheeb W, Ghazali R (2019) A novel error-output recurrent neural network model for time series forecasting. Neural Comput Appl 32:9621–9647CrossRef
20.
Zurück zum Zitat Hewamalage H, Bergmeir C, Bandara K (2021) Recurrent neural networks for time series forecasting: current status and future directions. Int J Forecast 37(1):388–427CrossRef Hewamalage H, Bergmeir C, Bandara K (2021) Recurrent neural networks for time series forecasting: current status and future directions. Int J Forecast 37(1):388–427CrossRef
21.
Zurück zum Zitat Bandara K, Bergmeir C, Smyl S (2020) Forecasting across time series databases using recurrent neural networks on groups of similar series: a clustering approach. Expert Syst Appl 140:112896CrossRef Bandara K, Bergmeir C, Smyl S (2020) Forecasting across time series databases using recurrent neural networks on groups of similar series: a clustering approach. Expert Syst Appl 140:112896CrossRef
22.
Zurück zum Zitat Gu Q, Lu N, Liu L (2019) A novel recurrent neural network algorithm with long short-term memory model for futures trading. J Intell Fuzzy Syst 37(4):4477–4484CrossRef Gu Q, Lu N, Liu L (2019) A novel recurrent neural network algorithm with long short-term memory model for futures trading. J Intell Fuzzy Syst 37(4):4477–4484CrossRef
23.
Zurück zum Zitat Kurumatani K (2020) Time series forecasting of agricultural product prices based on recurrent neural networks and its evaluation method. SN Appl Sci 2(8):1–17CrossRef Kurumatani K (2020) Time series forecasting of agricultural product prices based on recurrent neural networks and its evaluation method. SN Appl Sci 2(8):1–17CrossRef
24.
Zurück zum Zitat Abbasimehr H, Shabani M, Yousefi M (2020) An optimized model using LSTM network for demand forecasting. Comput Ind Eng 143:106435CrossRef Abbasimehr H, Shabani M, Yousefi M (2020) An optimized model using LSTM network for demand forecasting. Comput Ind Eng 143:106435CrossRef
26.
Zurück zum Zitat Li Y, Dai W (2020) Bitcoin price forecasting method based on CNN-LSTM hybrid neural network model. J Eng 2020(13):344–347CrossRef Li Y, Dai W (2020) Bitcoin price forecasting method based on CNN-LSTM hybrid neural network model. J Eng 2020(13):344–347CrossRef
27.
28.
Zurück zum Zitat Baek Y, Kim HY (2018) ModAugNet: a new forecasting framework for stock market index value with an overfitting prevention LSTM module and a prediction LSTM module. Expert Syst Appl 113:457–480CrossRef Baek Y, Kim HY (2018) ModAugNet: a new forecasting framework for stock market index value with an overfitting prevention LSTM module and a prediction LSTM module. Expert Syst Appl 113:457–480CrossRef
29.
Zurück zum Zitat Lin Y, Yan Y, Xu J et al (2021) Forecasting stock index price using the CEEMDAN-LSTM model. N Am J Econ Finance 57:101421CrossRef Lin Y, Yan Y, Xu J et al (2021) Forecasting stock index price using the CEEMDAN-LSTM model. N Am J Econ Finance 57:101421CrossRef
30.
Zurück zum Zitat Chang Z, Zhang Y, Chen W (2019) Electricity price prediction based on hybrid model of adam optimized LSTM neural network and wavelet transform. Energy 187:115804CrossRef Chang Z, Zhang Y, Chen W (2019) Electricity price prediction based on hybrid model of adam optimized LSTM neural network and wavelet transform. Energy 187:115804CrossRef
31.
Zurück zum Zitat Ji Y, Liew AWC, Yang L (2021) A novel improved particle swarm optimization with long-short term memory hybrid model for stock indices forecast. IEEE Access 9:23660–23671CrossRef Ji Y, Liew AWC, Yang L (2021) A novel improved particle swarm optimization with long-short term memory hybrid model for stock indices forecast. IEEE Access 9:23660–23671CrossRef
32.
Zurück zum Zitat Abbasimehr H, Paki R (2021) Improving time series forecasting using LSTM and attention models. J Ambient Intell Hum Comput 13:673–691CrossRef Abbasimehr H, Paki R (2021) Improving time series forecasting using LSTM and attention models. J Ambient Intell Hum Comput 13:673–691CrossRef
33.
Zurück zum Zitat Jahangir H, Tayarani H, Gougheri SS et al (2020) Deep learning-based forecasting approach in smart grids with microclustering and bidirectional LSTM network. IEEE Trans Ind Electron 68(9):8298–8309CrossRef Jahangir H, Tayarani H, Gougheri SS et al (2020) Deep learning-based forecasting approach in smart grids with microclustering and bidirectional LSTM network. IEEE Trans Ind Electron 68(9):8298–8309CrossRef
34.
Zurück zum Zitat Chauhan S, Singh M, Aggarwal AK (2021) Design of a two-channel quadrature mirror filter bank through a diversity-driven multi-parent evolutionary algorithm. Circuits Syst Signal Process 40(7):3374–3394CrossRef Chauhan S, Singh M, Aggarwal AK (2021) Design of a two-channel quadrature mirror filter bank through a diversity-driven multi-parent evolutionary algorithm. Circuits Syst Signal Process 40(7):3374–3394CrossRef
35.
Zurück zum Zitat Vashishtha G, Kumar R (2021) An effective health indicator for the Pelton wheel using a Levy flight mutated genetic algorithm. Meas Sci Technol 32(9):094003CrossRef Vashishtha G, Kumar R (2021) An effective health indicator for the Pelton wheel using a Levy flight mutated genetic algorithm. Meas Sci Technol 32(9):094003CrossRef
36.
Zurück zum Zitat Xiangxue W, Lunhui X, Kaixun C (2019) Data-driven short-term forecasting for urban road network traffic based on data processing and LSTM-RNN. Arab J Sci Eng 44(4):3043–3060CrossRef Xiangxue W, Lunhui X, Kaixun C (2019) Data-driven short-term forecasting for urban road network traffic based on data processing and LSTM-RNN. Arab J Sci Eng 44(4):3043–3060CrossRef
37.
Zurück zum Zitat Sunil CK, Jaidhar CD, Patil N (2021) Cardamom plant disease detection approach using EfficientNetV2. IEEE Access 10:789–804 Sunil CK, Jaidhar CD, Patil N (2021) Cardamom plant disease detection approach using EfficientNetV2. IEEE Access 10:789–804
Metadaten
Titel
The analysis of agricultural Internet of things product marketing by deep learning
verfasst von
Qiuyan Liu
Xuan Zhao
Kaihan Shi
Publikationsdatum
28.09.2022
Verlag
Springer US
Erschienen in
The Journal of Supercomputing / Ausgabe 4/2023
Print ISSN: 0920-8542
Elektronische ISSN: 1573-0484
DOI
https://doi.org/10.1007/s11227-022-04817-5

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