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ÖgeA peak current controlled dimmable sepic led driver with low flicker(Graduate School, 2022-01-18) Örüklü, Kerim ; Yıldırım, Deniz ; 504181056 ; Electrical Engineering ; Elektrik MühendisliğiNowadays, a considerable part of the energy consumption in the world has been formed by lighting sources used in buildings, industry, transportation, and commercial. Yet, there has been a rapid decrease in traditional energy resources. Therefore, an energy efficient lighting system could be a solution to global energy problem. Light-emitting diodes (LEDs) have been taken much attention lately and expected to replace with classical lamps due to their special characteristics like high efficiency, long lifetime, environment friendly, robustness, and small size. However, a driver circuit is required to operate LEDs and constant current drivers can improve the LEDs performance. Hence, studies on LED driver circuits and its control method have recently been increased both in industry and in academia. In some applications, it is desirable to have control on LED brightness. This can be done by a current-control method that adjust the current flowing through LEDs. But, there are recommended practices while modulating current in High-Brightness LEDs for mitigating health risk to viewers in IEEE Std. 1789-2015. Most of the driver circuit have put on the market without any flicker measurements and checking these recommended practices about percent flicker and flicker index. All light sources may have flicker with various levels. However, the flicker generally exists in LED lighting when AC to DC conversion is present. Because of the full-wave bridge rectification in AC-DC LED drivers, LED lamps will have a peak-to-peak current ripple at twice the line frequency (100 Hz or 120 Hz). Hence, the flicker is mainly dependent on the driver circuit for LED lighting. Health risks and biological effects of flicker to the viewers such as headache, eyestrain, and seizures cannot be ignored and should be taken into consideration when designing a LED driver. A flicker-free LED driver can improve the visual performance and offer a human health friendly lighting. In this thesis, a peak-current control method is proposed for 30-Watt Single Ended Primary Inductor Converter (SEPIC) LED driver with adjustable output current. The proposed control strategy is based on measuring MOSFET peak current value using a shunt resistor. When this voltage reaches peak threshold value, controller turns off switch. The output current is adjusted to desired levels by changing this peak threshold value. Both simulation and implementation of the driver have been carried out. 220V rms, 50 Hz AC main is used as input of the driver. Pulse Width Modulation (PWM) signals are generated by using UC3842 and TL3845 Integrated-Chips (IC). Flicker measurements are taken from the output current curve. To validate proposed peak current control method, a 33.6 Watt, 112 V / 0.3 A SEPIC LED driver prototype is constructed and tested. Analysis and measurements have been carried out for different output current levels. Peak efficiency is obtained as 88.4% at nominal output current. Furthermore, 5.806% and 6.540% of percent flicker have been obtained at 300mA and 100mA, respectively. It has been found that the proposed Peak-Current-Mode-Controlled SEPIC LED driver offers LED brightness control for the consumer comfort, a high efficient system for energy efficiency, and a low-risk level of flicker for human health.
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ÖgeAdaptive signal processing based intelligent method for fault detection and classification in microgrids(Lisansüstü Eğitim Enstitüsü, 2021) Azizi, Resul ; Şeker, Şahin Serhat ; 724566 ; Elektrik MühendisliğiThe ever-increasing energy demand, the environmental issue of fossil fuels and the high investment cost for the establishment of bulk power plants lead energy plans to more flexible and scattered small-scale energy sources. The main feature of these new topologies is that they consume renewable energy sources for electricity generation. It also requires less time to plan, build and operate. Moreover, they are close to energy sources and local loads. So, there are more efficient, with minimal environmental issues. However, besides their benefits and advantages, they pose a new challenge for traditional power systems. These challenges include protection issues, stability concerns, and complex control systems and so on. Traditional power systems include mass generation followed by transmission and distribution. In this topology, it is possible to plan generation because consumption at the transmission level of the power system is more predictable and fuel resources are always available for generation units. On the other hand, the transmission system and its conditions can be controlled by state estimators and SCADA system. Therefore, production and consumption uncertainties are minimal and conventional protection is sufficient to protect these systems. Also, distribution systems have no generating units, systems are mostly radial and overcurrent protection systems are sufficient to protect them. In these passive networks, it is not necessary to have fast and reliable protection systems as in transmission systems. The initial role of these new energy sources was to act as a backup for mass production and to eliminate the small generation and consumption mismatch during peak consumption. On the other side, huge demand growth and investment time of mass production units and environmental concerns make these distributed energy resources (DERs) (wind, solar, biomass, etc.) popular in the distribution system. However, the contribution of the early DER groups to the total production is low and the control systems are very sensitive to voltage disturbances such as faults. Thus, according to the grid codes, after any minor fault or disturbance in the system, the DERs are disconnected, synchronized manually and reconnected after the fault is cleared. With the increasing penetration of DERs in distribution systems, they play an important and rapidly increasing role in the total production of the system. Therefore, de-energizing all these DERs in an area in the distribution system after a fault has occurred can lead to stability problems due to generation and consumption imbalance. Accordingly, a new concept called microgrid emerged and mainly established in distribution systems. This topology is the microscale of the power system. It can operate autonomously and cover the total demand of this local distribution system. Like the SCADA power system, it has an equivalent centralized monitoring and control system. The total generation is almost sufficient for the total demand of the loads in distribution networks converted to microgrid. It can operate as a standalone ecosystem separated from the main grid and is self-sufficient. The basic requirement of this topology for connecting to the main grid through PCC (point of common coupling) is to increase the total inertia of the system and increase the post-fault stability region. In addition, this topology can transfer energy to the main system if it produces more power than the loads consume. This can reduce the stress of mass production units. Last but not least, if the main upper grid disturbed, the microgrid can continue to supply its loads by disconnecting from the grid. In this new concept, grid codes expect the micro grid to be able to ride through faults and disturbances thanks to low voltage ride through (LVRT) systems. In fact, as a micro-scale model of the power system, the voltage of the DERs at the time of fault occurance is controlled by the LVRT, and the DERs continue to operate without disconnection after the fault is cleared by circuit breakers or other elements). Therefore, more complex control systems are required for DERs. However, microgrids are distribution systems and unlike traditional power systems, there is a high amount of uncertainty in generation and consumption (loads). The distribution system has changed from a passive network to an active dynamic network. In this system, topology, generation and consumption are changed faster and faster than in conventional power systems. This situation constantly changes the fault current level and direction, and the conventional overcurrent protection is completely insufficient to protect them. Also, due to the high penetration of sensitive DERs, prolonged fault current is not allowed (stability concerns). Moreover, inverter-based DERs have a very small contribution to the fault current level. The current protection method of microgrids is adaptive protection. In this model, all operating conditions of the system are extracted and all components of the systems are continuously monitored by central or decentralized control system or even dynamic load estimation. This model cannot be applied to a central control system because it has to process large amounts of data at a high sampling rate and it is impossible to make real-time decisions. Based on these facts, a new intelligence-based method for fault detection and classification of microgrid is proposed in this thesis. In the proposed method, three different adaptive signal processing methods are used to extract the short-time transient component of the signal instead of the fault current level. It transfers data (feature extraction) into three different data spaces. The main feature of these signal processing methods is that they do not use a predefined basis to decompose a signal. The basis is adaptive to signal and extract components depend on the noise penetration level and frequency components of the signal. An intelligence-based method called Brwonboost is used to make decisions in these data spaces, and the total decision is taken by the majority of votes of these three intelligence-based methods in these three data spaces. The main unique feature of the proposed method compared to traditional machine learning methods is its adaptability and uses a non-convex optimization method for detection and classification. The proposed method is a set of weak classifiers and tries to learn the data space step by step and iteratively. It tries to adapt the data by classifying the data that was misclassified in previous iterations. On the other hand, the unique non-convex optimization feature of the proposed method gives it an intelligence to select or discard misclassified data. It can decide step-by-step removal of the algorithm's iteration data in the training process if there is an outlier or a violation in another class area. This feature provides evidence against overfitting and becomes as practical a method as it is for real-world measured data. Finally, a Brownboost decision is also made by a majority vote of the weak classifiers. An intelligence-based method called Brwonboost is used to make decisions in these data spaces, and the total decision is taken by the majority of votes of these three intelligence-based methods in these three data spaces. In this method the classifier works base on the margin. This means, instead of only finding a classifier that minimize the classification error, it selects a classifier that has maximum discrimination between data of every class. The unique feature of the proposed method compared to traditional machine learning methods is its adaptability and uses a non- convex optimization method for detection and classification. The proposed method is an ensemble of weak classifiers and tries to learn the data space step by step and iteratively. It tries to adapt to the data by classifying the data that was misclassified in previous iterations. On the other hand, the unique non-convex optimization feature of the proposed method gives it an intelligence to select or discard misclassified data. During this step-by-step process, the algorithm can detect outliers or misclassified data that intensely violated other class area and remove it. This feature makes it robust against overfitting and becomes as practical method for real-world measured data. In total, the proposed method tries to classify the data in three different data spaces. The data area that makes maximum distinction between the data of each class is less sensitive to noise. Thus, a classifier has are fewer generalization errors to unseen new data (higher margin). Therefore, its Brownboost has more voting power in decision making. The results are test in test benchmark microgrid. DERs are modeled with the detailed model to extract the true detail form of the signal. Various types of control model and fault ride thruogh feature of DERs are implemented.
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ÖgeCompensation of dead time caused output voltage distortion in SPWM full bridge inverter(Graduate School, 2022-01-18) Polat, Umutcan ; Yıldırım, Deniz ; 504181073 ; Electrical Engineering ; Elektrik MühendisliğiNowadays, inverters have become an indispensable element for many application areas when industrial applications are examined. Inverters are widely used in battery systems, renewable energy systems, control of various electrical machines and power systems. Due to the fact that inverter is often used in industry, studies on inverters have increased recently and inverter technologies are developing gradually. Generally, single-phase or three-phase full bridge voltage source inverters are used in such applications and there are various modulation techniques such as sinusoidal pulse width modulation technique, space vector pulse width modulation technique and etc. to provide voltage and frequency control of these inverters. These various techniques have been developed to minimize switching losses and reduce harmonics in output current and voltage. In real applications, power switches used in power electronics circuits are not ideal. These power switches have turn-on and turn-off time in switching characteristic. Because of this reason, the simultaneous conduction of switches on the same leg causes short circuit in inverter circuit. This situation is undesirable. In order to prevent synchronous conduction of both switches of the same leg at the same time, time delay is inserted to the driving signal of these switches.This time is called as dead time. Although dead time/blanking time has to be used in this circuits as mentioned above, the dead time has a very negative effects in terms of distortion of output waveforms. These problems are distorion of the output voltage and current waveform to contain a significant number of harmonic components at low voltage and high switching frequency. During the dead time, distortion of the voltage and current waveforms can be seen clearly at zero crossings of the current. In literature, this situation is called as zero-current-clamping phenomenon. This effect becomes greater as the switching frequency increases. In order to eliminate or reduce these effects, several approaches have been proposed. These methods can be listed as dead time compensation methods, dead time elimination methods, dead time minimization methods. It is seen that it is necessary to use dead time compensation methods since it is desired that the output voltage of the inverters is close to the sinus form and thus the total harmonic distortion is be reduced to a minimum. In order to provide this, these compensation methods are gradually developed. In this thesis context, time compensation method, which is one of the dead time compensation methods, is used. The turn-on or turn-off time of the power devices are adjusted by changing pulse-width in this method. Pulse-width is increased or decreased at zero crossings of the current. Thus, THD value of output waveforms is decreased by using this method. In this thesis, both simulation and implementation of a voltage source single-phase inverter have been carried out and the sinusoidal pulse width modulation method (SPWM) is used as modulation technique. Digital sinusoidal pulse width modulation is programmed with the help of STM32F407VG microcontroller of STM series. In addition, STM32CubeIDE is used as development tool. SPWM is produced by comparing the sine tables, which is produced by the microcontroller, with the microcontroller counter. This circuit is designed as open-loop system and the modulation index is initially set to a certain value both R and RL loads. While the input voltage of the designed circuit is 400 V, the output voltage is 220Vrms and the switching frequency is 20 kHz. The output power of the designed circuit is between 450 and 480 W at both R and RL loads. In addition, the dead time is 1 µs in all cases. In fixed dead time, output voltage and current for compensated and uncompensated states are obtained by simulation and implementation at R and RL loads. Due to the effect of dead time, harmonic distortions are observed on the output voltage and output current in uncompensated state. In order to minimize this effect, the time compensation method, which is one of the dead time compensation methods, is used within the scope of this thesis as mentioned above. Thus, the harmonic distortion is aimed to be reduced. According to simulation results, while the total harmonic distortion of output voltage is 5.34 at uncompensated state, total harmonic distortion of output voltage is 3.15 at compensated state at R load. On the other hand, while the total harmonic distortion of output voltage is 5.42 at uncompensated state, total harmonic distortion of output voltage is 3.71 at compensated state at RL load. According to experimental results, while the total harmonic distortion of output voltage is 5.89 at uncompensated state, total harmonic distortion of output voltage is 3.86 at compensated state at R load. On the other hand, while the total harmonic distortion of output voltage is 6.02 at uncompensated state, total harmonic distortion of output voltage is 4.50 at compensated state at RL load. According to the results, It has been clearly seen that the applied time compensation method reduces the harmonic distortions on the output voltage caused by the dead time.
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ÖgeDağıtık üretim sistemlerinin akıllı şebekeler üzerine etkilerinin incelenmesi(Lisansüstü Eğitim Enstitüsü, 2022) Pürlü, Mikail ; Türkay, Belgin ; 726855 ; Elektrik MühendisliğiTeknolojinin gelişmesiyle birlikte, elektrik enerjisine olan ihtiyaç ve talep her geçen gün artmaktadır. Artan tüketici talebi karşısında, üretim, iletim ve dağıtım sistemlerinin yetersiz kaldığı durumlar ortaya çıkabilmektedir. Yetersiz kalan bu şebekelerde artan hat yüklenmeleri nedeniyle, kayıp güç artışları, gerilim düşümü problemleri, elektrik kesintisi ve güvenirlik gibi çeşitli önemli problemler ortaya çıkmaktadır ve tüketiciler hem sosyal hem de ekonomik yönden rahatsız olmaktadır. Ayrıca, artan fosil yakıt fiyatları ve azalan fosil yakıt rezervleri nedeniyle yeni üretim teknolojilerine ihtiyaç giderek artmaktadır. Artan hava kirliliği ve iklim bozulmaları gibi çevresel kaygılar, yenilenebilir enerji üretim teknolojilerinde büyük gelişmelere öncü olmuştur. Bu gelişmeler, yenilenebilir enerji sistemlerinden enerji üretim maliyetlerini giderek düşürmektedir. Artan enerji talebini karşılamakta zorlanan şebekelerde, kayıpları azaltmak ve gerilim profilini iyileştirmek amacıyla, ağın yeniden yapılandırılması, kapasitör tahsisi veya dağıtık üretim sistemlerinin tahsisi önerilmektedir. Yeni hatların oluşturacağı ek maliyetler ve fiziksel olarak her zaman uygulanabilir olmaması gibi nedenler ağ yeniden yapılandırmasını zorlaştırmaktadır ve dağıtık üretim ön plana çıkmaktadır. Kayıpları azaltmak, gerilim profilini iyileştirmek, şebekeye bağlı kesintilere çözüm üretmek ve çeşitli güç kalitesi katkıları nedeniyle merkezi üretim yerine, ucuz ve sınırsız olan yenilenebilir enerji kaynaklarını da üretime kazandırabilen, dağıtık üretim teknolojilerinin kullanımı giderek yaygınlaşmaktadır. Merkezi üretimle beslenen şebekelerde tek yönlü olan yük akışı, dağıtık üretim sistemlerinin entegre edilmesiyle birlikte çift yönlü olarak gerçekleşmektedir. Bu durum güç kayıplarında artışa ve koruma sistemlerinde arıza algılama sorunları gibi çeşitli olumsuz sonuçlara yol açabilir. Ancak, dağıtık üretim sistemleri tahsis edilmeden önce çeşitli analizler yapılarak planlanırsa, kayıpları ve gerilim devinimini azatlma, gerilim profilini ve gerilim kararlılık indeksini geliştirme, güvenirliği artırma ve şebekeye bağımlılığı azaltma gibi pek çok katkıyı beraberinde getirmektedir. Literatürde, dağıtık üretim sistemlerinin optimum tahsisini gerçekleştirmek için analitik yöntemler, sezgisel yöntemler ve hibrit yöntemler önerilerek, çeşitli IEEE test sistemleri veya ülkelerin gerçek dağıtım şebekeleri üzerinde test edilmiştir. Bu çalışmada, güç kayıplarını azaltmak ve gerilim profilini iyileştirmek amacıyla dağıtık üretim sistemlerinin optimum tahsisi gerçekleştirilmiştir. Bu amaçla, sezgisel algoritmalardan olan, Genetik Algoritma ve Parçacık Sürü Optimizayonu algoritmaları önerilmiş ve IEEE 33 baralı radyal dağıtım sistemi üzerinde uygulanmıştır. Öncelikle, literatür kıyaslaması yapabilmek ve algoritmaların doğruluğunu kanıtlamak amacıyla, puant yük talebi için dağıtık üretim tahsisi gerçekleştirilmiştir. Tüm dağıtık üretim tipleri ve özellikle literatürde kullanılmayan Tip IV için optimum tahsis, üç farklı senaryo özelinde gerçekleştirilmiştir. Analizlere göre en düşük fayda, reaktif güç tüketimi nedeniyle Tip IV ile ve en yüksek fayda hem aktif hem de reaktif güç üreten Tip III ile sağlanmıştır. Parçacık Sürü Optimizasyonu, Genetik Algoritma'ya nazaran daha iyi sonuçlar verirken, her ikisi de minimum kayıp, maksimum gerilim iyileşmesi ve yakınsama gibi açılardan literatürden çok daha iyi sonuçlar vererek, üstünlüklerini kanıtlamışlardır. Algoritmaların güvenirliği ve doğruluğu kanıtlandıktan sonra, asıl hedef olan yıllık toplam enerji kayıplarını ve gerilim devinimi azatlamak amacıyla yenilenebilir enerji kaynaklarının şebekeye optimum tahsisi geçekleştirilmiştir. Mevsimsel üretim ve tüketim belirsizliklerini içeren bu çalışmada, yenilenebilir enerji kaynakları olarak güneş panelleri ve rüzgar türbinleri kullanılmıştır. Yenilenebilir kaynakların sağladığı katkıyı ölçmek ve uygulanabilirliğini kıyaslamak amacıyla, fosil yakıt tüketimine dayalı konvansiyonel kaynaklar da kullanılmıştır. Yapılan çalışmalarda teknik olarak en iyi sonuçlar konvansiyonel kaynaklarla elde edilirken, en düşük katkı ise mevsimsel ve günlük olarak güneş ışınım dağılımının düzgün olmaması sebebiyle, güneş panelleri tarafından sağlanmıştır. Hem güneş ışınım dağılımına nispeten daha düzgün rüzgar dağılımı olmasından dolayı konvansiyonel kaynaklara yakın miktarda teknik katkı sağlayan hem de zararlı sera gazı salınımı olmaması nedeniyle çevreci olan rüzgar türbinlerinin optimum güç faktöründe işletilmesi en uygun dağıtık üretim çözümü olarak önerilmiştir. Literatürde ve yapılan bu çalışmada, dağıtık üretim kaynaklarının tahisinin yük akışı analizlerine dayanması nedeniyle çok fazla zaman aldığı görülmüştür ve bu problemin üstesinden gelmek amacıyla da makine öğrenmesine dayalı bir tahmin metodolojisi önerilmiştir. Makine Öğrenmesi algoritmalarından olan Lineer Regresyon, Yapay Sinir Ağları, Destek Vektör Regresyonu, K En Yakın Komşu ve Karar Ağacı algoritmaları kullanılarak, optimum dağıtık üretim gücünün ve şebekeye etkilerinin tahmini sağlanmıştır. Algoritmaları ve önerilen metodolojinin uygulanabilirliğini göstermek için IEEE 12, 33 ve 69 baralı standart test sistemlerinin gerekli verileri toplanmıştır. Toplanan verilerin %75'i, WEKA programında bulunan makine öğrenmesi algoritmaları ile tahmin modellerinin eğitimi için kullanılmıştır ve %25'lik test verisiyle de algoritmaların performansı ve doğruluğu değerlendirilmiştir. Değerlendirme metrikleri olarak, R-kare (R2) analizi ve ortalama mutlak yüzde hata (Mean Absolute Percentage Error, MAPE) hesaplaması kullanılmıştır. Tüm algoritmalar, kabul edilebilir hata aralığının dışına çıkmayan ve uygulanabilir doğrulukta tahminler gerçekleştirmiştir. Tek giriş değişkeni olan tahmin modellerinde Destek Vektör Regresyonu algoritması ve çok giriş değişkeni olan tahmin modellerinde K En Yakın Komşu algoritması daha başarılı olmuştur. Giriş ve çıkış değişkenleri arasında doğrusal bağlantı bulunmayan verilerin tahmininde ise Lineer Regresyon kabul edilebilir bir sonuç vermemiştir ve kullanımı uygun bulunmamıştır. Dağıtık üretim sistemlerinin optimum boyutunun, yerinin ve güç faktörlerinin belirlenmesinde önerilen sezgisel algoritmalar üstün performans göstermiştir ve yeni bir metodoloji olarak sunulan, dağıtık üretim sistemi optimum boyutu ve şebekeye etkilerinin tahmininde Makine Öğrenmesi kullanımı uygun ve etkin bulunmuştur. Daha büyük sistemler üzerinde çalışılması, enerji depolama sistemlerinin eklenmesi, yeni sezgisel veya hibrit algoritmalarla çözümler, makine öğrenmesi ile birlikte güçlendirilmiş tahmine dayalı çözümler ve farklı yenilenebilir teknolojilerin kullanımı gelecek çalışması olarak önerilmektedir.
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ÖgeDeep learning for wind energy systems using the hurst exponent and statistical parameters(Graduate School, 2021-08-14) Alafi, Behnaz ; Şeker, Şahin Serhat ; 504181008 ; Electrical Engineering ; Elektrik MühendisliğiAs we all know, energy demand is continuously increasing because of population growth and developing technology. As a result of this increasing demand, energy shortages and environmental pollution will occur. Besides, because of the growing crisis and other critical issues around energy, renewable energy is taking countries' attention and becoming important in various parts of the entire world. Wind energy, solar power, tidal energy, geothermal energy, etc. as renewable energy sources have been used to solve these issues. Among these alternative sources of energy, wind and solar energy have got the most attention recently. Since wind power has less pollution, shorter construction time, less occupation, and flexible investment, it has become one of the most effective sources of energy. And in this study, the information is about wind data. But the wind is unstable and mainly affected by meteorological and navigational conditions and the principle for its implementation changes from one place to another. These changes in the meteorological measurement cause uncertainty in wind farms' generated power that affects power supply and quality. Also, because it is impossible to generate every power amount by wind energy or store electrical energy, there is a limitation on the amount of output power. Therefore, An accurate prediction can cause the cost of power generation reduction, less winding reserve capacity of the grid, and more reliable operation of the grid. Because of aforesaid reasons, prediction in wind energy systems is a very important issue. Nowadays, deep neural networks have been considering for prediction problems. In this study, the convolutional neural network(CNN) as a deep neural network is used to do predictions in wind energy systems based on meteorological data of one station. Since the Hurst exponent H is used to determine the predictability degree of a set of data, it gives some information about data that is useful in developing predictive models both theoretical and computational in nature. We first aim to apply the Hurst exponent method on wind energy data and then execute a deep neural network on data to tarin data through that deep neural network. Work steps: this literature study on the yearly meteorological features of one station applies deep learning methods to it. First of all, we gathered reported data for wind speed, air pressure, and relative humidity as the inputs of one deep neural network to train that network for predicting wind speed data. Since the power of one turbine is related to wind speed value, studying the wind speed behavior of one location leads to the study of the power capacity of that location. Before training a neural network, it is better to study the behavior of wind speed and find its statistical model and predictability degree, so before entering meteorological data into a deep neural network we studied statistical parameters of wind speed and find the probability density of it and then we found Hurst exponent, as the factor for predictability degree, and, then, all data is entered to one CNN to tarin that network and predict wind speed data.
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ÖgeHavacılık uygulamaları için emniyet kritik daimimıknatıslı alternatör tasarımı ve analizi(Lisansüstü Eğitim Enstitüsü, 2022-06-03) Ersöz, Hüseyin ; Kocabaş, Ahmet Derya ; 504191024 ; Kimya MühendisliğiHavacılık motorları, hava araçlarına itki veren temel bileşen olmanın yanında barındırdıkları elektriksel güç üretim sistemleri ile platformun ihtiyaç duyduğu elektrik enerjisinin üretilmesini sağlar. Hava araçlarında güç üretim ihtiyacı, içten yanmalı motorun başlatılması için bir elektrik motoru olan marş motorlarının kullanılması ile başlamıştır. Zaman içerisinde ilerleyen teknoloji ile birlikte hava araçlarına iç aydınlatma, ısıtma ve haberleşme gibi elektikle çalışan sistemler eklenmeye başlanmıştır. Bunun yanında motor ve platformda hidrolik, mekanik ve pinomatik sistemler yerine daha yüksek verimli olan elektrikli sistemler kullanılmaya başlanmıştır. Hava araçlarının ihtiyaç duyduğu elektrik enerjisi gelişen teknoloji ile beraber günden güne artmakta ve elektriksel güç üretim sistemlerinin güç yoğunluğu giderek artmaktadır. Yüksek güç yoğunluğunu sağlamak adına elektriksel güç üretim sistemlerinde sürekli mıknatıslı alternatörler tercih edilir. Bir hava aracının havada kalabilmesi için elektrik enerjisi gereklidir ve bu enerjiyi sağlayan güç üretim sisteminin en zorlu koşullarda bile aktif olması ve hata durumlarında platforma zarar vermemesi kritik bir öneme sahiptir. Bu sebeple yüksek güç yoğunluğunun yanında elektriksel güç üretim sistemlerinin hata toleransının yüksek olması gereklidir. Böylece olası bir hata durumunda içten yanmalı motor çalışmasına devam etmeli ve platform görev süresini tamamlamalıdır. Ayrıca hata anında ve sonrasında motorda ve platformda oluşacak tahribat en düşük seviyede tutulmalıdır. Bu çalışma kapsamında hata toleransı en yüksek olan sürekli mıknatıslı alternator topolojisini belirlemek adına aynı tepe seviyede isterlere sahip gömülü mıknatıslı generatör, mıknatıs destekli senron relüktans makine ve yüzey mıknatıslı generatör tasarımları gerçekleştirilmiş olup, emniyet kritiklik, ağırlık ve üretilebilirlik bakımından karşılaştırılmıştır. Karşılaştırma sonucunda hava aracı güç sistemlerinde kullanılması en uygun olan topoloji belirlenmiş ve hata toleransını artırmaya yönelik tasarım çözümleri bu topolojiye uygulanmıştır. Alternatör analitik tasarım ve elektromanyetik analizleri sonlu elemanlar paket programları olan JMAG ve ANSYS MAXWELL ile gerçekleştirilmiştir. Çalışmanın son bölümdünde en iyileştirilmiş tasarımın rölanti ve maksimum devirdeki performansı elde edilmiştir. Ayrıca 3 boyutlu analiz ile demir ve bakır kayıpları çıkarılıp verim hesabı yapılmıştır. Ek olarak tasarımı yapılan hata toleransı yüksek, emniyet kritik alternatörü geliştirmeye yönelik öneriler sunulmuştur.
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ÖgeOnline impedance measurement of batteries using cross-correlation technique(İTÜ Graduate School, 2022) Gücin, Taha Nurettin ; Ovacık, Levent ; 723130 ; Elektrik MühendisliğiAlthough the foundation of battery technologies had been laid out quite a long time ago, the recent increase of the interest for technologies such as renewable energies, portable devices, electric vehicles urged the battery technology to emerge as a major research topic. Moreover, for such applications, the batteries generally considered to be one of, if not the most crucial component of the system, as the energy provided within them ensures the continuity of system operations. Additionally, the lifetime of such systems is generally directly correlated with the lifetime of batteries utilized thereof. Consequently, the assessment of battery condition is a crucial aspect for the durability and stability of a very wide range of applications. However, as most of the parameters regarding the status of the batteries are not directly measurable, the battery status generally has to be estimated. This task is generally undertaken by a battery management system (BMS), which often runs some tests on the battery to predict certain parameters such as state of health (SOH) and state of charge (SOC). Electrochemical Impedance Spectroscopy (EIS) principally presents the complex impedance values of a battery over a frequency range of interest and it is widely accepted as the most advanced testing technique for batteries as it allows a foundation for the estimation of various battery parameters such as battery temperature, SOC and SOH. However, very often, these measurements have to be accompanied with advanced estimation algorithms for ensuring reliable and accurate estimation of parameters. This thesis aims to provide a practical implementation of EIS measurements. For this purpose, the study presented in this thesis implements the suggested method into the DC-DC converters, which are almost always present in the systems deploying batteries. The implemented method is based on cross-correlation calculations. In the first part of the thesis the motivation and the objectives of the study is elaborated and a literature overview of the state of the art is provided for representing the current approaches and for emphasizing the need for improvements. The first part is followed by a theoretical background section, where the principles of the cross-correlation calculations and it's adaptation to battery EIS measurements are explained in detail. Several improvements for the method, especially aimed for battery applications, are also provided. In the subsequent part, the theoretical findings are supported by simulations, which are created in MATLAB by using the Simulink graphical programming environment. In this part, the theory is preliminarily tested by simulations regarding impedance measurements of a passive RLC circuit. In the latter part, a test bench is designed for performing experiments to serve as proof of concept for the suggested approach. The test bench comprises a digitally controlled boost converter that is configured for charging a 12-V, 7-Ah sealed lead-acid (SLA) battery. The boost converter is controlled by an FPGA based platform, namely the Nexsys 4 DDR of Xilinx. The digital controller also comprises subprogram for injecting the necessary signals to the battery. The waveforms that occur during the tests are then recorded by a data acquisition system based on NI cDAQ platform so that the saved data can be processed in MATLAB environment for calculating the EIS diagrams. During the experiments, firstly, the battery is tested via the proposed method at 50% SOC. It is shown that the results of the present approach coincide with those obtained by a commercially-available, laboratory-type, high-precision instrument. Finally, the tests were also repeated for 25% and 75% SOC values. Additionally, further results are also presented to prove the validity of the approach even when the DC-DC converter is configured to provide a constant current under closed feedback loop. In conclusion, it is shown that the proposed approach can be reliably used to analyse the impedance of batteries over a wide frequency range during battery charging process.