000 03896nam a22003137a 4500
008 260505t2023 bx aod|g m||| 00| 0 eng d
040 _aUniversiti Teknologi Brunei
_beng
_cUTB
084 _aUTB 120 REPORT THESIS & DISSERTATION
_bRTDS 448
100 1 _aDayangku Azreen Binti Pengiran Hj Tajudin
_eauthor.
245 1 0 _aImproving The Efficiency of Oyster Mushroom Cultivation Using IoT and Deep Learning /
_cDayangku Azreen binti Pengiran Hj Tajudin
260 _aBandar Seri Begawan:
_bUniversiti Teknologi Brunei,
_c@2023.
300 _ax, 113 pages :
_bColor illustration;
_c30 cm
500 _aDissertation Submitted in Fulfilment of the Requirements for the Degree of Master of Science
500 _aABSTRACT This research aims to enhance the quality and yield of oyster mushroom cultivation in Brunei by leveraging innovative technologies. Brunei's equatorial climate poses challenges for oyster mushroom cultivation, with constant heat and humidity hindering optimal growth conditions. As a result, Brunei relies on mushroom imports to meet domestic demand. However, recognizing the potential of agriculture, particularly mushroom cultivation, the government has incentivized local youths to engage in agribusiness through grants and support. This study focuses on two primary objectives: Utilizing IoT for Environmental Monitoring and Deep Learning for Disease Detection. For the first objective, we deploy loT sensors to monitor temperature, humidity, and other relevant parameters within cultivation environments, collect comprehensive datasets, analyse data to identify correlations between environmental conditions and mushroom yield, implement adjustments to cultivation practices, and quantify improvements in yield and quality, stating the experiments have successfully shown a higher yield of 2.17 grams per bag for rack A with loT than rack B without IoT for a small number of bags. For the second objective, we train CNN models using annotated datasets of diseased and healthy mushroom samples, integrate the models into an automated disease detection system, evaluate the system's performance, implement preventive measures based on early disease detection, and quantify the reduction in crop damage and increase in overall cultivation success rates, stating the experiments have successfully shown a higher success rate for using Convolutional Neural Network in disease detection in mushroom cultivation. The experiments reveal a consistent decrease of 0.5% in disease detection percentage each day towards healthier bags, alongside fluctuations of 5.9% in detection percentage between consecutive days for specific bags. Despite these variations, our CNN-based system consistently outperforms manual labelling methods, validating its efficacy in improving disease management strategies in mushroom cultivation. By achieving these objectives, this research endeavours to address the challenges mushroom cultivators face in Brunei and pave the way for sustainable and technology-driven agricultural practices in the region.
502 _aDissertation (Master of Science) - Universiti Teknologi Brunei (2023)
504 _aInclude bibliographical references
610 4 _vThesis
_aUniversiti Teknologi Brunei
610 4 _vFinal Year Report
_aUniversiti Teknologi Brunei
650 4 _aPleurotus Ostreatus
_zBrunei Darussalam
650 4 _aMushroom Culture
_zBrunei Darussalam
650 4 _aInternet of Things
650 4 _aAgriculture (General)
_xMethods and Systems of culture, cropping system
700 1 _cDr
_eSupervisor.
_aRavi Kumar Patchmuthu
700 1 _eSupervisor.
_aSerina Mohd Ali
942 _2lc
_n0
_cRTDS
998 _eReport, Thesis & Dissertation
_s850666 : 002501 c.1_ UTB
_xUniversiti Teknologi Brunei
999 _c24040
_d24040