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Intelligent Control of Hybrid Renewable Energy Sources and Integration With Smart Grid [Ms Electric Power and Energy]

Thesis Info

Author

Taimour Ahmed, Ch.

Department

UMT. School of System and Technology. Department of Informatics and Systems

Program

MS

Institute

University of Management and Technology

Institute Type

Private

City

Lahore

Province

Punjab

Country

Pakistan

Thesis Completing Year

2019

Thesis Completion Status

Completed

Page

48 .

Subject

Engineering

Language

English

Other

School of System and Technology; English; Call No: TP 621.3191 TAI-I

Added

2021-02-17 19:49:13

Modified

2023-01-06 19:20:37

ARI ID

1676714357589

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شک سے دشت بہیں ، آہ سے دریا سوکھیں
مچھلیاں دشت میں پیدا ہوں ، ہرن پانی میں
کوئی بھی بات کہنے کوبہت چھوٹی یا معمولی ہوتی ہے ، مگر اس بات کا فہم ، ادراک اورسب سے بڑھ کر اس پر تفکر اس کو اعلیٰ اور عظیم بنا دیتا ہے۔ کہنے کو اس دنیائے فانی میں میں کتنے لوگ پیدا ہوئے اور کتنے مر گئے۔ ان میں سے بہت سارے گمنامی کی موت مر جاتے ہیں اور ان کی زندگی کی تلخیوں کے بارے کسی کو خبر تک نہیں ہوتی اور نا ہی ان کے شگفتہ اخلاق لوگوں پر آشکار ہوتے ہیں۔ اس کے بر عکس بہت کم لوگ ایسے ہوتے ہیں، کہہ لیں آٹے میں نمک کے برابر، جو اپنی بات کو منجھے ہوئے انداز میں کرتے ہیں کہ اگلا بندہ ان کی بات سنتے ہی فریفتہ ہو جاتا ہے اور تعریف کرنے پر مجبور ہو جاتا ہے ۔ انگریزی ادب میں ایسی ہی ایک شخصیت سر فرانسیس بیکن ہے، جن کی زندگی دنیا کے تلخ و شیریں تجربات سے گزر کر کندن بن گئی تھی ۔ اپنی زندگی کے تجربات کی روشنی میں انہوں نے بہت سے مضامین لکھے جو کہ حقیقتاً تعریف کے قابل ہیں ۔ یہ کتاب جو آپ کے ہاتھوں میں ہے یہ سر فرانسیس بیکن کے مضامین کا اردو ترجمہ ہے۔ میں نے بارہا اس بارے میں سوچا۔ کچھ مخلص دوستوں کے کہنے پر اس بارے قلم اٹھایا اور بیکن کے کچھ مضامین کو اردو کے قالب میں ڈھال دیا ۔ گو کہ یہ مشکل کام تھا مگر میری زندگی کایہ تجربہ بہت خوش گوار رہا ۔ میں اُس باری تعالی کا بڑا شکر گزار ہوں جس نے مجھے اس معاملے میں قلم اٹھانے کی طاقت دی اور اسے تکمیل بخشی۔

ڈاکٹر محمد قاسم علی رانا
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خاندانی تعلقات میں نفقہ کا اسلامی تصور

In human life, family relations are of basic importance. In the Islamic Law, the proportion of rights and obligations amongst the relatives is in accordance with human nature. The nature of relations amongst family members has been brought into light with Islamic and Natural perspectives. Amongst those rights and obligations, the responsibility for expense is of primary importance, because its clear understanding illustrates the reality of all the family relations which causes the positive effects on the whole society. In this article, by discussing the expense (rights and obligations) of relatives, the Islamic instructions, basic philosophy, general effects, necessity and its importance has been brought into light. All facts have been presented under two heads of expense (rights) of wife and expense (rights) of the relatives. But, in the light of Quran and Hadith, it has been agreed by all the Islamic Jurisprudents, upon the necessity/obligation/ compulsion of the right of expense for the relatives just like the right of expense for a wife. In this article and attempt has been made to clarify that, in a family setup, how much importance has to be given to the rights and duties/obligations of a wife?

Analysis and Comparison of Crop Classification, Growth and Condition Using Scan Crop and Photographic Data

The main purpose of this research is to build up a system, based on standard or objective parameters rather than non-standard or subjective parameters, which are already being employed by researchers, for the crop classification and crop growth analyses. The research is divided into two portions; the first part deals with the crop classification, whereas the second part is concerned with the crop growth analysis. For this purpose two types of datasets have been used; radiometric data and photographic data. In portion 1 radiometric data is acquired by using a handheld crop scan device ‗MSR5‘, in the form of five spectral bands, from 450nm to 1750nm, with five types of wavelength blue, green, red, infrared and far-infrared, whereas, the photographic data is obtained by a digital camera with14.1Mpixels resolution To meet the objectives a system has been developed and employed on two types of data; (a) test data and (b) experimental data. Both types of data (radiographic and photographic) are classified by using ANN classifier. In test data, five land classes are differentiated by this system. Photographic images of the same five types of land classification (as radiometric data) are used to extract following five types of 77 statistical textural features, which may be grouped as; first order (histogram) features, second order (GLCM) features, higher order (GLRM) features, autoregressive features, and gradient matrix based features are calculated from ROI (32x32),(64x64),(128x128),(256x256) and (512x512) by using MaZda software. The most relevant features for each size of ROI are selected by three approaches; Fisher‘s Co-efficient, Probability of Error plus Average Correlation Co-efficient, and Mutual Information Co-efficient. In this way the most relevant 10 features were selected by each method. We receive very poor results when data analysis capability is verified on the basis of 10 features are selected by each method for each size of ROI except (512x512), by three multivariate techniques; PCA, LDA, and NDA available in ‗B11‘, software integrated with MaZda. To improve the results, a set of 20 features is obtained by merging the features selected by each approach. An excellent clustering result with accuracy of 91.9% received, when data of these 20 features extracted from ROI (512x512) was deployed to NDA projection space. By using supervised classification approach, artificial neural network (ANN) the system is trained and tested on the basis of 70% and 30% of input data respectively. We received an accuracy of 100% and 91.33% in training and testing phase respectively. Similarly in radiometric data 250 data instances are taken for five different types of land (50 data instances for each type of land), for training purpose 40 data instances of each land type is used. Total 200 samples out of (250) are used to train the data system. Testing is performed on 50 samples (10 samples from each land type) and 96.40% accuracy result is obtained for radiometric data. On the basis of test data analysis, it is concluded that the proposed system produces the best result for large ROI window size when a combined set of features is deployed in NDA projection space. The photographic experimental data (five different types of crop) is analyzed under these settings. To check the system routine two disjoint sets of data with 70/30 ratio for training and testing respectively are developed ANN classifier available in B11 software under n-class training and testing option. is checked for the settings to which NDA has shown the best performance, Results show that the system training accuracy increases by number of neurons in input layer, and testing accuracy processes up to certain configuration. The best training accuracy of 85.17 and testing accuracy is 81.25% with 7 input layers at learning rate 0.35.For radiometric data ANN is trained and tested. For this purpose 400 scans data (80 scans from each class) is used to train the classifier and the remaining 100 scans data (20 scans from each class) was employed to test the classifier. We received an average accuracy of 94.50% during training and 96.00% accuracy in testing phase. In second part, which is concerned with the crop growth analysis, field data is acquired at different six stages by using crop scan MSR 5 (for radiometric data ) and a Photographic data was acquired by a digital camera mounted at a height by which approximately five square feet area is imaged in each photo. For every stage fifty images of photographic data are acquired from different regions of the crop field and the radiometric data is acquired at the altitude of 10 feet from the ground level. (This way the device scans an area of 5 square feet for each scan). For each stage approximately hundred scans are acquired by the said device from consecutive areas, the crop growth is assessed on the basis of reflectance values of five bands acquired by the devices at different stages. It is also observed that the same wave lengths (IR and FIR) are very helpful for the assessment of crop growth. For the growth assessment, in this study, we explore the changes in canopy spectrum feature of wheat. Reflectance patterns during the growing season expose a large amount of information about the changes in the visible and near-infrared (NIR) wavelengths. There is a rapid raise in the NIR values as soon as the crop develops while the changes in the visible wavebands adjust more slowly. Throughout the growing season the NIR wavelengths are more active than the visible wavelengths. This is due in part the reflectance values for bare soil being closer to the visible reflectance than NIR values. We bring to a close that the presence of infrared and far-infrared wavelengths makes the radiometric data more inventive for classification/differentiation as compared to photographic data.