Araştırma Makalesi

Classification of Orange Features for Quality Assessment Using Machine Learning Methods

Cilt: 38 Sayı: 3 16 Aralık 2024
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Classification of Orange Features for Quality Assessment Using Machine Learning Methods

Öz

Oranges are a member of the citrus family and are eaten in large quantities due to their high vitamin C content, sweet and tart taste, and useful fiber and antioxidant qualities. Orange quality assurance is essential to market competitiveness and customer satisfaction. Conventional approaches to evaluating quality are costly and susceptible to mistakes made by people. This research aims to investigate how well different machine learning algorithms automate and improve the orange quality assessment procedure. A dataset containing 241 samples and 11 features (size, weight, sweetness (Brix), acidity (pH), and color) was used to evaluate the effectiveness of the Random Forest (RF), XGBoost, and k-Nearest Neighbors (k-NN) algorithms. According to the findings, k-NN acquired the maximum accuracy of 69.38%, with RF coming in second at 67.34% and XGBoost third at 63.26%. These results demonstrate how machine learning models may be used to improve quality control in the orange industry by offering a more dependable and effective approach. According to this study, machine learning can greatly improve the quality control procedures for oranges, resulting in higher-quality goods for customers and more productivity for providers. The orange sector can enhance product quality and expedite operations by utilizing these technologies, which will eventually benefit both producers and consumers.

Anahtar Kelimeler

Kaynakça

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Ayrıntılar

Birincil Dil

İngilizce

Konular

Hassas Tarım Teknolojileri

Bölüm

Araştırma Makalesi

Erken Görünüm Tarihi

13 Aralık 2024

Yayımlanma Tarihi

16 Aralık 2024

Gönderilme Tarihi

30 Haziran 2024

Kabul Tarihi

22 Ağustos 2024

Yayımlandığı Sayı

Yıl 2024 Cilt: 38 Sayı: 3

Kaynak Göster

APA
Cengel, T. A., Gencturk, B., Yasin, E., Yıldız, M. B., Cinar, I., Özbek, O., & Koklu, M. (2024). Classification of Orange Features for Quality Assessment Using Machine Learning Methods. Selcuk Journal of Agriculture and Food Sciences, 38(3), 403-413. https://izlik.org/JA82KS84CP
AMA
1.Cengel TA, Gencturk B, Yasin E, vd. Classification of Orange Features for Quality Assessment Using Machine Learning Methods. Selcuk J Agr Food Sci. 2024;38(3):403-413. https://izlik.org/JA82KS84CP
Chicago
Cengel, Talha Alperen, Bunyamin Gencturk, Elham Yasin, vd. 2024. “Classification of Orange Features for Quality Assessment Using Machine Learning Methods”. Selcuk Journal of Agriculture and Food Sciences 38 (3): 403-13. https://izlik.org/JA82KS84CP.
EndNote
Cengel TA, Gencturk B, Yasin E, Yıldız MB, Cinar I, Özbek O, Koklu M (01 Aralık 2024) Classification of Orange Features for Quality Assessment Using Machine Learning Methods. Selcuk Journal of Agriculture and Food Sciences 38 3 403–413.
IEEE
[1]T. A. Cengel vd., “Classification of Orange Features for Quality Assessment Using Machine Learning Methods”, Selcuk J Agr Food Sci, c. 38, sy 3, ss. 403–413, Ara. 2024, [çevrimiçi]. Erişim adresi: https://izlik.org/JA82KS84CP
ISNAD
Cengel, Talha Alperen - Gencturk, Bunyamin - Yasin, Elham - Yıldız, Müslüme Beyza - Cinar, Ilkay - Özbek, Osman - Koklu, Murat. “Classification of Orange Features for Quality Assessment Using Machine Learning Methods”. Selcuk Journal of Agriculture and Food Sciences 38/3 (01 Aralık 2024): 403-413. https://izlik.org/JA82KS84CP.
JAMA
1.Cengel TA, Gencturk B, Yasin E, Yıldız MB, Cinar I, Özbek O, Koklu M. Classification of Orange Features for Quality Assessment Using Machine Learning Methods. Selcuk J Agr Food Sci. 2024;38:403–413.
MLA
Cengel, Talha Alperen, vd. “Classification of Orange Features for Quality Assessment Using Machine Learning Methods”. Selcuk Journal of Agriculture and Food Sciences, c. 38, sy 3, Aralık 2024, ss. 403-1, https://izlik.org/JA82KS84CP.
Vancouver
1.Talha Alperen Cengel, Bunyamin Gencturk, Elham Yasin, Müslüme Beyza Yıldız, Ilkay Cinar, Osman Özbek, Murat Koklu. Classification of Orange Features for Quality Assessment Using Machine Learning Methods. Selcuk J Agr Food Sci [Internet]. 01 Aralık 2024;38(3):403-1. Erişim adresi: https://izlik.org/JA82KS84CP

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