A B C D E F G H I J K L M N O P Q R S T U V W X Y Z All
Singh, Gopal
- Effect of Different Dose of Cytokinin for Shoot Multiplication of Banana (Musa paradisiaca L.) Variety ‘GRAND NAINE’ under In-vitro Condition
Authors
1 Sardar Vallabhbhai Patel University of Agriculture Technology, Meerut (U.P.), IN
Source
International Journal of Agricultural Sciences, Vol 12, No 1 (2016), Pagination: 65-72Abstract
The maximum callus formation (20.3%) was observed in treatment BAP 8 mgl-1 while the minimum (4.6%) was noted under control. With the combination of BAP and BA, the maximum callus formation ( 27.0%) was recorded under BAP 8 mgl-1 + BA 4 mgl-1 ; however, it was at par with BAP 8 mgl-1 + BA 3 mgl-1 at 75 days after inoculation.At 90 days after inoculation, maximum callus percentage (29.3) was found under BAP 8 mgl-1+ BA 4 mgl-1. At 105 days after inoculation, callus percentage was maximum callus (33.0%) was noted under the treatment combination of BAP 8 mgl-1+ BA 4 mgl-1, however, it was significantly at par with BAP 8 mgl-1+ BA 3 mgl-1, while the minimum (9.3%) was recorded under control again. The earliest shoot initiation (21.0, 22.0 days, respectively) was noted under BAP 8 mgl-1 and BA 5 mgl-1, separately; while it was statistically earliest i.e. 20.66 days in combination with BAP 2 mgl-1+ BA 5 mgl-1. Maximum shoot length (0.76 cm) was recorded in the treatment of BAP 8 mgl-1. at 20 days after shoot initiation.Maximum shoot length (3.06 cm) was noted under BAP 8 mgl-1 alone which statistically superior to other under BAP alone treatments while it recorded minimum under control at 40 days after shoot initiation. Under BA treatments, the maximum shoot length (2.26 cm) was noted with BA 4 mgl-1 and 5 mgl-1 both; however, it was at par with BA 2 mgl-1 and 3 mgl-1 at 40 days after shoot initiation. With the effect of BAP and BA combinations, the maximum shoot length (3.23cm) was recorded under BAP 8 mgl-1+ BA 5 mgl-1 at 40 days after shoot initiation. The minimum duration of ischolar_main initiation (14.66 days) was noted under the treatment of Indole Butyric acid 4 mgl-1 ; however, it was significantly at par with indole butyric acid 2 mgl-1 and 3 mgl-1. The maximum duration (34.33 days) was observed under control. Minimum number of ischolar_mains (4.0 ischolar_mains) were recorded under the treatment applied 1 mgl-1 IBA in culture medium. Further, number of ischolar_mains was found maximum 10.33 ischolar_mains under the treatment of 5 mgl-1 IBA followed by 4 mgl-1 IBA concentrations. Culture medium with IBA 5 mgl-1 showed maximum ischolar_main length (1.66 cm) followed by IBA 4 mgl-1 , 3 mgl-1 and 2 mgl-1 with 1.56 cm, 1.40 cm and 1.06 cm, respectively. It was concluded that BAP 8 mgl-1 and BA 5 mgl-1 separately performed better results on account of callus formation, shoot initiation and multiplication of shoots whereas with their combination viz., BAP 8 mgl-1 +BA 4 mgl-1 showed best result on the above parameters. For ischolar_main initiation and its development IBA 5 mgl-1 was found to be the best among all the treatments.Keywords
Cytokinin, Shoot Multiplication, Banana, In-vitro Condition.References
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- Frison, E. and Sharrock, S. (1998). The economic, social and nutritional importance of banana in the world, pp 21 35. In: Bananas and Food Security (C. Picq, E. Foure and E. A Frison eds.). INIBAP, International Symposium, Douala, Cameroon.
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- Hernandez, J.B.P. and Garcia, P.R. (2008).Inflorescence proliferation for somatic embryogenesis induction and suspension-derived plant regeneration from banana (Musa AAA, cv. ‘DWARF CAVENDISH’) male flowers. Plant Cell Reports, 27 (6):965-971.
- Jafari, N., Othman, R.Y. and Khalid, N. (2011). Effect of benzylaminopurine (BAP) pulsing on in vitro shoot multiplication of Musa acuminata (banana) cv. BERANGAN. African J. Biotechnol.,10 (13):2446–2450.
- Krikorian, A.D., Irizarry, H., Cronauer-Mitra, S.S. and Rivera, E. (1993). Clonal fidelity and variation in plantain (Musa AAB) regenerated from vegetative stem and floral axis tips in vitro. Ann. Bot., 71 (6):519–535.
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- Mahadev, S.R., Kathithachalam, A. and Marimuthu, M. (2011).An efficient protocol for large-scale plantlet production from male floral meristems ofMusa spp. cultivars VIRUPAKSHI and SIRUMALAI. In Vitro Cellular & Develop. Biol. Plant, 47 (5):611–617.
- Meenakshi, S., Shinde, B.N. and Suprasanna, P. (2011). Somatic embryogenesis from immature male flowers and molecular analysis of regenerated plants in banana "Lal Kela" (AAA). J. Fruit & Ornam. Plant Res.,19 (2):15–30.
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- Resmi, L. and Nair, A.S. (2007). Plantlet production from the male inflorescence tips of Musa acuminata cultivars from South India. Plant Cell Tiss. Organ Cult., 88:333-338.
- Sultan, M.T., Khan, M.H., Hakim, M .L., Mamun, A.N.K., Morshed, M.A. and Islam, M.R. (2011). In vitro plant regeneration from male flowers of banana.Internat. J. Biosciences, 1(1):1–11.
- Wirakarnain, S., Hossain, A.B.M.S. and Chandran, S. (2008). Plantlet production through development of competent multiple meristem cultures from male inflorescence of banana, Musa acuminta cv. ‘PISANG MAS’ (AA). American J. Biochem. & Biotechnol., 4 (4):325-328.
- Performance of High Density Planting of Mango (Mangifera indica L.) under Mid-Western Plain Zone of Uttar Pradesh
Authors
1 Sardar Vallabhbhai Patel University of Agriculture and Technology, Meerut (U.P.), IN
Source
International Journal of Agricultural Sciences, Vol 12, No 2 (2016), Pagination: 298-301Abstract
An experiment was conducted at Zonal Research Centre -Nagina (Bijnor)-246 762(U.P.) during 2000 to evaluate the performance of high density planting of mango (Mangifera indica L.). The mango variety Dashehari scion wood of 20-22cm grafted on seedling ischolar_mainstock in July 1999 were planted at Horticulture Section in August, 2000 at two spacing viz., 10m × 10m (100 plants/ha-normal density) and 3.0m × 3.0 (1111plants/ha-high density). Five grafts were planted in normal density and 160 grafts were planted in high density employing about 0.1940 ha area. Grafts in normal density were planted at marked points prepared by pit digging (1×1×1m) and then by filling the pits with dug soil mixed with 100 g N, 75 g P2O5 and 75 g K2O fertilizer mixture, whereas grafts in high density were planted directly with the use of fertilizers containing 100 kg N, 75 kg P2O5 and 75kg K2O/ha. Normal package of pracices was applied in both the system of plantings. The plant height (5.30m) was recorded under normal planting whereas it was found little different in high density of mango at 11th year of their planting. The stem girth under normal system was noted as 55.7cm whereas,it was slightly reduced to 50.7cm under high density of planting. The expansion of East-West and North- South direction both were recorded same as 3.10m and 3.03m in normal planting and high density planting, respectively. The fruit yield 22.30q/ha was noted under normal density of planting whereas, it was 242.20q/ha at 5th year of planting under high density planting system. The fruit yield ranged from 22.30to 109.80 q/ha from 5th year to 11th year, respectively under normal system of planting whereas it ranged from 242.2 to 1093.22q/ha under HDP system of planting. The observations showed that the fruit yield ratio of normal system of planting to HDP were 1:10.86, 1:9.92, 1:9.90,1:8.67, 1:9.80, 1:9.27 and 1:9.95 from 5th year to 11th year of age, respectively. So, it is a very informative and need of the hour to plant HDP system of mango just to get 9 to 10 times more yield for increasing mango productivity and to reach the king of fruit to the common people.Keywords
High Density Planting, Mangifera indica, Mango.References
- Iyer, C.P.A. and Kurian, Reju M. (2006). High density planting in tropical fruits : Principles and practices. International Book Distributing, Lucknow ISBN 81-8189-0949.
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- Ram, S. and Sirohi, S.C. (1985). Studies on high density orcharding in mango cv. DASHEHARI. Acta Hort., 231 : 339-344.
- Ram, S., and Sirohi, S.C. (1991). Feasibility of high density orcharding in Dashehari mango. Acta Hort., 291 : 207-211.
- Ravishankar, H., Nalawadi, U.G., and Rao, M.M. (1992). Smoothing of alternate bearing rhythm in “Alphonso” mango by period and intensity of pruning under mildtropical rainy climatic conditions. IV Internat. Mango Symp. Abstrs., 86 p.
- Studies on the Effect of Growth Regulator and Vermicompost on Growth and Yield of Different Cultivars of Strawberry (Fragaria x ananassa Duch)
Authors
1 Department of Horticulture, Sardar Vallabhbhai Patel University of Agriculture and Technology, Meerut (U.P.), IN
Source
The Asian Journal of Horticulture, Vol 10, No 2 (2015), Pagination: 222-231Abstract
The present investigation was carried out at the Horticulture Research Center, of the SardarVallabhbhai Patel University of Agriculture and Technology, Meerut during 2013- 2014.The maximum number of fruits (20.85) were recorded in the variety Chandler which was significantly superior to the rest of the varieties and followed by Gorella,Selva and Confictura.The maximum fruit yield per plant (385.57g) was recorded in the variety Chandler which was superior to the rest of the varieties and was followed by Selva, Confictura and Douglas. The minimum fruit yield per plant (177.79g) was noted in Gorella variety.The maximum fruit weight (18.41g) was recorded in the variety Chandler which was significantly superior to the rest and followed by Confictura, Selva and Douglas.Application of gibberellic acid (GA3) 100 ppm + vermicompost @ 100q/ha was found to be the best treatment in response to fruit weight among different varieties of strawberry and recorded 16.48g. The maximum fruit yield (171.36q/ha) was recorded in the variety Chandler which was significantly superior to the rest and was followed by Selva, Confictura and Douglas; however, Selva and Confictura were statistically at par to each other. Variety Chandler responded maximum effect on fruit yield per hectare i.e. 205.357q/ha with the spray of gibberellic acid (GA3) 100 ppm and application of vermicompost @ 100q/ha. The maximum total soluble soilds (10.68ºBrix) was recorded in the variety Douglas which was superior to the rest and was followed by Confictura, Selva and Gorella. The minimum TSS value (9.41ºBrix) was noted in Chandler variety. Douglas responded maximum effect on TSS value i.e. 11.50 ºBrix with the spray of gibberellic acid (GA3) 100 ppm and application of vermicompost @ 100q/ha as basal dose which was statistically significant to other treatments and followed by Confictura, Selva and Gorella. Viewing the above observations, Chandler, Confictura and selva were found promising for commercial cultivation, however, Gorella was found to be earliest among all.
Keywords
Growth Regulator, Vermicompost, Growth, Yield, Cultivars.- Nutritional Content of Different Pretreated Mushroom (Pleurotus Florida) Powders
Authors
1 Department of Agricultural Engineering, Sardar Vallabhbhai Patel University of Agriculture and Technology, Meerut (U.P.), IN
2 Department of Plant Pathology, Sardar Vallabhbhai Patel University of Agriculture and Technology, Meerut (U.P.), IN
3 Department of Agricultural Biotechnology, Sardar Vallabhbhai Patel University of Agriculture and Technology, Meerut (U.P.), IN
Source
International Journal of Agricultural Engineering, Vol 12, No 2 (2019), Pagination: 256-260Abstract
Experiments were carried out to develop mushroom powder using oyster mushroom (Pleurotus florida) with three different treatments. Products were kept in pet jar during storage. Physico-chemical parameters like moisture, ash, fat, protein, crude fibre, sugar, carbohydrates, energy, fatty acids, minerals, vitamins etc. were evaluated. Investigation for organoleptic evaluation of the products was also performed during storage. On the basis of the experimental data it may be concluded that blanched mushroom powder samples contains minimum moisture, due to rapture of cells during blanching process. In most cases, values like ash, protein, fat, carbohydrates, sugar, energy and mostly vitamins; KMS treated samples were found superior over control and blanched samples. During organoleptic evaluation KMS treated mushroom powder sample got better score over other samples.Keywords
Mushroom Powder, Nutritional Content, KMS, Sensory Evaluation.References
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. January. 5 p. Bahri saiful, S. and Rosli Wan, W.I. (2016).
- Design of Hybrid Metaheuristic Optimization Algorithm for Trust-Aware Privacy Preservation in Cloud Computing
Authors
1 Department of Computer Science and Applications, Maharshi Dayanand University, Rohtak (Haryana), IN
2 Ch. Devi Lal Government Polytechnic, Nathusari Chopta, Sirsa (Haryana), IN
Source
International Journal of Computer Networks and Applications, Vol 10, No 6 (2023), Pagination: 934-946Abstract
The growing relevance of trust and privacy preservation in cloud computing environments stems from the need to preserve sensitive data, comply with regulations, and maintain user confidence in the face of evolving cyber risks and privacy issues. This study suggests a unique key strength assessment, trust model, and ABC-GOA hybrid optimization technique-based privacy-preserving mechanism. The trust model is essential for determining how trustworthy cloud service providers (CSPs) are. To assess the trustworthiness of CSPs, it considers elements including reputation, regulatory compliance, and user input. The trust model assists users in selecting CSPs for their requirements in data storage and processing by taking these factors into account. The suggested system includes key strength assessment, which uses Shannon entropy to assess the reliability of cryptographic keys, to improve data security. This assessment guarantees that the encryption keys used to safeguard sensitive data are robust enough to fend against assaults and illegal access. Users may be sure that their data is private and safe in the cloud environment by calculating the key strength. The hybrid ABC-GOA optimization approach optimizes the suggested mechanism's privacy and data security and this method combines the benefits of the two algorithms to improve the capabilities for exploration and exploitation. The ABC-GOA algorithm effectively explores the solution space and identifies the best solution, enhancing the privacy-preserving mechanism's overall functionality. To tackle an optimization challenge, our proposed model was compared to current models. The suggested model using the ABC-GOA algorithm has the greatest optimal cost value for privacy preservation, data security, and computational efficiency. This demonstrates the excellence and potency of our suggested technique in resolving the issues presented by data security and privacy in cloud systems.Keywords
Cloud Service Provider (CSP), Trust Model, Artificial Bee Colony (ABC), Grasshopper Optimization Algorithm (GOA), Advanced Encryption Standard (AES), Key Strength, Cloud Computing.References
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