Intermittent FOCV Using an I-V Curve Tracer for Minimizing Energy Loss

: Conventional fractional open-circuit voltage (FOCV) methods in maximum power point tracking (MPPT) are widely adopted for their simple structure and low computing power require-ments. However, under mismatch and environmental changing conditions, the FOCV methods introduce a large amount of energy loss due to their maximum power point being ﬁxed at the initial setup. To reduce energy loss, the intermittent FOCV MPPT proposed in this paper regularly refreshes all the parameters for each condition in time by using an I-V curve tracer. The proposed intermittent FOCV consists of two phases: the scan and set phases. In scan phase, the I-V curve of a photovoltaic (PV) cell is scanned and its power is calculated. In set phase, the global MPP of the PV cell is extracted and set by controlling the 8-bit capacitance array. Simulation and calculation based on experimental results with a single PV cell show that the energy loss of the proposed intermittent FOCV under daily temperature and illuminance distributions decreased by up to 99.9% compared to that of the conventional FOCV. Abstract: Conventional fractional open-circuit voltage (FOCV) methods in maximum power point tracking (MPPT) are widely adopted for their simple structure and low computing power requirements. However, under mismatch and environmental changing conditions, the FOCV methods introduce a large amount of energy loss due to their maximum power point being fixed at the initial setup. To reduce energy loss, the intermittent FOCV MPPT proposed in this paper regularly refreshes all the parameters for each condition in time by using an I-V curve tracer. The proposed intermittent FOCV consists of two phases: the scan and set phases. In scan phase, the I-V curve of a photovoltaic (PV) cell is scanned and its power is calculated. In set phase, the global MPP of the PV cell is extracted and set by controlling the 8-bit capacitance array. Simulation and calculation based on experimental results with a single PV cell show that the energy loss of the proposed intermittent FOCV under daily temperature and illuminance distributions decreased by up to 99.9% compared to that of the conventional FOCV.


Introduction
Batteryless Internet-of-Things (IoT) devices have been widely used for various wireless sensors by converting light [1], vibration [2,3], and thermal gradient [4] into electric energy. Among these various sources, a photovoltaic (PV) cell that harvests electric energy from light is the most anticipated energy source [1,5]. Since the performance and I-V characteristics of the PV cell vary depending on external environmental factors such as irradiance, temperature, and load impedance, maximum power point tracking (MPPT) methods are necessary for maximizing the power output of PV cells under various conditions [6]. Figure 1a shows an electrical model of a PV cell. Sweeping the voltage of the PV cell, V PV , the current, I PV , and the power, P PV can be obtained as Figure 1b [7]. The MPP can be determined at the voltage V MPP = αV OC , where α (0 ≤ α < 1) is linear factor.
There have been many MPPT methods: single step algorithm including perturb & observe (P & O), binary-weighted step algorithm including successive approximation register (SAR) [8], combined algorithm based on adaptively binary-weighted step (ABWS) and monotonically decreased step (MDS) [8], and fractional open-circuit voltage (FOCV) [9][10][11][12]. The P & O method is very popular method due to its flexibility and balance between complexity and accuracy. It can also dynamically detect the actual MPP with high tracking efficiency, although at the expense of oscillation around the MPP at the steady state, which causes a large amount of energy loss [12][13][14]. Therefore, the P & O technique is not appropriate for low power and low energy environments. SAR MPPT technique is based on the binary-weighted step (BWS) for fast tracking [13], but the most-significant-bit (MSB) operation runs first in the SAR MPPT, which aggravates the overall energy loss [6]. Although least-significant-bit (LSB) switching at the initial step in [8] reduces abrupt energy As depicted in Figure 1b, in an FOCV method, the MPP is determined at the fraction of the open-circuit voltage V OC of a PV cell, α. For a simple structure and low power consumption, the FOCV methods adopt approximation-based techniques that are a more appropriate method for low energy environments [8]. However, if changes in environmental conditions are present, the mismatch of α between the new and the previous values by the FOCV leads to a large amount of energy loss. In this paper, while taking advantage of FOCV methods, the GMPP is regularly scanned by using an I-V curve tracer, and the re-evaluated α is set for MPPT without using an additional ad-hoc parameter.

Perturb and Observe (P & O)
The procedure to track the MPP in the P & O algorithm is explained as follows: the P & O algorithm operates by periodically incrementing or decrementing the voltage of a PV cell. At first, the MPPT controller measures the voltage and the current of the PV cell. Then, the present power is compared to the previous power of the PV cell. Depending on whether the present power or the previous power is larger, the controller changes the PV voltage. If the present power is higher than the previous power, the P & O algorithm keeps increasing the input voltage of the PV cell, and vice versa. It is very simple to implement, but it is not appropriate for low power and low energy environments because of overall power loss caused by the fluctuation of its operating point around the MPP. If there are multiple MPPs, it cannot detect the GMPP because of the oscillation.

Successive Approximate Register (SAR)
The SAR MPPT includes an active mode and a power down mode that alternate periodically [6]. The SAR MPPT tracks the MPP in the active mode, and maintains the final voltage of the previous active mode during the power down mode. Unlike the P & O algorithm that tracks the MPP with a single step, the SAR MPPT uses the BWS to make the tracking speed faster than the P & O. Therefore, like the P & O, it is not appropriate for low power and low energy environments. Figure 2 shows the MPP tracking procedure of the conventional P & O and the SAR over time. The combined algorithm based on the adaptively binary-weighted search (ABWS) and the monotonically decreased step (MDS) aims at tracking the MPP as quickly as possible in order to reduce the power loss under rapidly changing environmental conditions [8]. Similar to the BWS, the ABWS tracks the MPP by increasing the voltage step, but starts from the LSB until the operating voltage step passes the MPP. Then, the ABWS stops and the MDS starts to operate, tracking the exact MPP. The MDS monotonically reduces the voltage step until the MPP is found. If the variation of the MPP drops below 1 LSB resolution, the MPP remains unchanged and the MDS operation is finished. Compared to the P & O and the SAR, this algorithm tracks the MPP faster than the P & O and consumes less power under stable environments.

Fractional Open-Circuit Voltage (FOCV)
The main principle of this technique comes from the relationship between the voltage of maximum power-point (V MPP ) and the open-circuit voltage (V OC ), which the V MPP approximately equals to some fractional value of the V OC . The relationship between the two voltages is defined as where α (0 ≤ α < 1) is the linear factor. Since there is no procedure for tracking the MPP, the FOCV method features the lowest implementation complexity and consumes the lowest circuit power. Therefore, the FOCV method is the most appropriate method for low-power and low-energy devices. Figure 3 illustrates the comparison of the circuit power consumption over time and the power consumption for the given time between the P & O, the SAR, and the FOCV algorithm.

Combined Algorithm Based on the Adaptively Binary-Weighted Search (ABWS) and the Monotonically Decreased Step (MDS)
The combined algorithm based on the adaptively binary-weighted search (ABWS) and the monotonically decreased step (MDS) aims at tracking the MPP as quickly as possible in order to reduce the power loss under rapidly changing environmental conditions [8]. Similar to the BWS, the ABWS tracks the MPP by increasing the voltage step, but starts from the LSB until the operating voltage step passes the MPP. Then, the ABWS stops and the MDS starts to operate, tracking the exact MPP. The MDS monotonically reduces the voltage step until the MPP is found. If the variation of the MPP drops below 1 LSB resolution, the MPP remains unchanged and the MDS operation is finished. Compared to the P & O and the SAR, this algorithm tracks the MPP faster than the P & O and consumes less power under stable environments.

Fractional Open-Circuit Voltage (FOCV)
The main principle of this technique comes from the relationship between the voltage of maximum power-point ( ) and the open-circuit voltage ( ), which the approximately equals to some fractional value of the . The relationship between the two voltages is defined as where (0 ≤ < 1) is the linear factor. Since there is no procedure for tracking the MPP, the FOCV method features the lowest implementation complexity and consumes the lowest circuit power. Therefore, the FOCV method is the most appropriate method for low-power and low-energy devices. Figure 3 illustrates the comparison of the circuit power consumption over time and the power consumption for the given time between the P & O, the SAR, and the FOCV algorithm. However, the MPP of the FOCV method is not the real MPP, but the approximated value. In [15], it is insisted that can be located within the range from 0.71 to 0.78. However, the values of recent PV cells on the market can be easily found between 0.8 and 0.86, as shown in Figure 4 However, the MPP of the FOCV method is not the real MPP, but the approximated value. In [15], it is insisted that α can be located within the range from 0.71 to 0.78. However, the α values of recent PV cells on the market can be easily found between 0.8 and 0.86, as shown in Figure 4, which shows the histogram of distribution of the α values for PV cells in [16][17][18][19][20][21][22][23][24][25][26][27][28][29][30][31][32][33]. Therefore, it is essential to set the exact α and the MPP because α values are distributed in a wide range for each PV cell.
Furthermore, if external environmental factors like illuminance and temperature cause changes in the MPP, energy loss can potentially happen unless the previous value of α is reset to new α. Figure 5 shows how the P-V characteristics and the α of a PV cell that has the value of 0.88 at 27 • C vary depending on temperature.
[32-33] [24][25] [21][22][23] [ [19][20] [17-18] [23,[26][27][28][29][30] [16] [31]  Furthermore, if external environmental factors like illuminance and cause changes in the MPP, energy loss can potentially happen unless the p of is reset to new . Figure 5 shows how the P-V characteristics and the that has the value of 0.88 at 27 °C vary depending on temperature. If and the MPP are not reset as soon as possible, the energy loss reduce the energy loss caused by unreal MPP, the proposed FOCV inter dynamically scans the I-V curve of the PV cell to detect the GMPP and re the MPP. Although the circuit power consumption caused by dynamically resetting the MPP can be larger than the P & O and SAR, it operates intermi the total energy loss of the proposed FOCV is much lower than that of th and conventional FOCV. Figure 6 illustrates the comparison of the energy the conventional and the proposed FOCV under varying conditions.   If α and the MPP are not reset as soon as possible, the energy loss increases. To reduce the energy loss caused by unreal MPP, the proposed FOCV intermittently and dynamically scans the I-V curve of the PV cell to detect the GMPP and reset the α and the MPP. Although the circuit power consumption caused by dynamically scanning and resetting the MPP can be larger than the P & O and SAR, it operates intermittently, so that the total energy loss of the proposed FOCV is much lower than that of the P & O, SAR, and conventional FOCV. Figure 6 illustrates the comparison of the energy loss between the conventional and the proposed FOCV under varying α conditions. for PV cells in [16][17][18][19][20][21][22][23][24][25][26][27][28][29][30][31][32][33]. Therefore, it is essential to set the exact and the MPP because values are distributed in a wide range for each PV cell. Furthermore, if external environmental factors like illuminance and temperature cause changes in the MPP, energy loss can potentially happen unless the previous value of is reset to new . Figure 5 shows how the P-V characteristics and the of a PV cell that has the value of 0.88 at 27 °C vary depending on temperature. If and the MPP are not reset as soon as possible, the energy loss increases. To reduce the energy loss caused by unreal MPP, the proposed FOCV intermittently and dynamically scans the I-V curve of the PV cell to detect the GMPP and reset the and the MPP. Although the circuit power consumption caused by dynamically scanning and resetting the MPP can be larger than the P & O and SAR, it operates intermittently, so that the total energy loss of the proposed FOCV is much lower than that of the P & O, SAR, and conventional FOCV. Figure 6 illustrates the comparison of the energy loss between the conventional and the proposed FOCV under varying conditions.

Proposed FOCV MPPT Algorithm
Unlike conventional MPPT methods, the proposed MPPT method finds GMPP because it scans the I-V curve for its working voltage range regardless of the number of local MPPs. The block diagram of the proposed FOCV MPPT circuit using an I-V curve tracer is shown in Figure 7 and the flow chart of the proposed FOCV MPPT is shown in Figure 8. The proposed FOCV MPPT technique consists of two phases, scan and set. In the first phase, also called scan phase, the system scans the voltage and current and calculates the power of the PV cell with the current-to-voltage converter (I2V), the voltage-to-PWM converter (V2PWM), and the multiplier. In the second phase, also called set phase, the system sets the MPP and α with the calculated value of the scan phase. Set phase consists of the sample and hold (S & H), and the proposed FOCV circuit.

Proposed FOCV MPPT Algorithm
Unlike conventional MPPT methods, the proposed MPPT method finds GMPP because it scans the I-V curve for its working voltage range regardless of the number of local MPPs. The block diagram of the proposed FOCV MPPT circuit using an I-V curve tracer is shown in Figure 7 and the flow chart of the proposed FOCV MPPT is shown in Figure 8. The proposed FOCV MPPT technique consists of two phases, scan and set. In the first phase, also called scan phase, the system scans the voltage and current and calculates the power of the PV cell with the current-to-voltage converter (I2V), the voltageto-PWM converter (V2PWM), and the multiplier. In the second phase, also called set phase, the system sets the MPP and with the calculated value of the scan phase. Set phase consists of the sample and hold (S & H), and the proposed FOCV circuit.   Obtain Disable (EN = Low) Set α = n MPP /n OC Multiplier

Proposed FOCV MPPT Algorithm
Unlike conventional MPPT methods, the proposed MPPT method finds GMPP because it scans the I-V curve for its working voltage range regardless of the number of local MPPs. The block diagram of the proposed FOCV MPPT circuit using an I-V curve tracer is shown in Figure 7 and the flow chart of the proposed FOCV MPPT is shown in Figure 8. The proposed FOCV MPPT technique consists of two phases, scan and set. In the first phase, also called scan phase, the system scans the voltage and current and calculates the power of the PV cell with the current-to-voltage converter (I2V), the voltageto-PWM converter (V2PWM), and the multiplier. In the second phase, also called set phase, the system sets the MPP and with the calculated value of the scan phase. Set phase consists of the sample and hold (S & H), and the proposed FOCV circuit.
Disable (EN = Low) Set α = n MPP /n OC Multiplier  of the PV cell (I PV ) from the short-circuit current (I SC ) to 0 A, and the voltage of the PV cell (V PV ) from 0 V to V OC . At the same time, I PV , which is mirrored by two current mirrors, is converted into voltage form (I PV_V ) by being multiplied with a resistor, R 1 . The relation between I PV and I PV_V can be expressed as where n is the number of iterations. For better linearity, two OP AMPs are implemented in the I2V by making each V D of MOSFET that is connected to the input of OP AMP the same.
same. The V2PWM converter is composed of two circuits, a ramp generator comparator. The ramp generator generates a ramp signal ( ) whose peak v (max ( )) is higher than the maximum value of _ , max( _ ). Comparing with , the comparator generates the PWM duty signal, _ . Usin constancy of the slope of , the slope can be expressed as where is the period of the ramp signal and ( ) is the width of the duty sig each iteration. Therefore, ( ) can be expressed as Equation (4).
As shown in Equation (4) and Figure 9c, the higher the current is, the wider the of the duty signal is. The V2PWM converter is composed of two circuits, a ramp generator and a comparator. The ramp generator generates a ramp signal (V RAMP ) whose peak voltage (max(V RAMP )) is higher than the maximum value of I PV_V , max(I PV_V ). Comparing I PV_V with V RAMP , the comparator generates the PWM duty signal, I PV_PW M . Using the constancy of the slope of V RAMP , the slope can be expressed as where T is the period of the ramp signal and T PW M (n) is the width of the duty signal of each iteration. Therefore, T PW M (n) can be expressed as Equation (4).
As shown in Equation (4) and Figure 9c, the higher the current is, the wider the width of the duty signal is. Figure 10 shows the block diagram and the timing diagram of the multiplier. The proposed multiplier calculates the power of the PV cell. For consuming low power, the proposed multiplier is implemented with analog circuits. The voltage form of the power of the PV cell, P PV_PW M is calculated by the amount of energy in capacitor C 1 . The current form of V PV (I PV_I ) can be expressed as where R 2 is the value of a resistor. I PV_I (n) charges the capacitor, C 1 , during T PW M (n) that I PV_PW M (n) is high. Calculated, the power of the PV cell, P PV_V , can be expressed as Equation (5).

Multiplier
where 2 is the value of a resistor. _ ( ) charges the capacitor, 1 , during ( ) that _ ( ) is high. Calculated, the power of the PV cell, _ , can be expressed as Equation (5).
Using Equations (4)-(6) can be expressed as Using the Equations (2) and (7) can be expressed as ( ) can be expressed as If is much higher than , Equation (9) can be expressed as At the same time, is also on and the previous value of the , ( − 1), is replaced by ( ). After all iterations are done, the point that has the final value of and is the maximum power point. We can track the MPP timing by all these iterations. Using Equations (4)-(6) can be expressed as Using the Equations (2) and (7) can be expressed as Figure 11 shows the block diagram and the timing diagram of the proposed sample and hold (S & H) circuit. In the S & H circuit, the MPP is tracked by comparing the current power, P PV_PW M (n), that is stored in C 1 , with the previous maximum power, P max (n − 1), that is stored in C 2 . If P PV_PW M (n) is lower than P max (n − 1), the output Q of D flip-flop is low, then move to next iteration. If P PV_PW M (n) is higher than P max (n − 1), Q is high, thus SW 1 is on. Then, C 2 stores the new value of maximum power, P max (n), via charge sharing. P max (n) can be expressed as  Figure 12 shows a simplified block diagram of the proposed FOCV that is composed of an generator, which is an analog-digital converter based on the SAR algorithm, and a capacitor bank. With two inputs of and , the generator generates a digital n-bit signal, < : 1 >, that represents the ratio of to based on the successive If C 1 is much higher than C 2 , Equation (9) can be expressed as P max (n) ≈ P PV_PW M (n) (10) At the same time, SW 2 is also on and the previous value of the V MPP , V MPP (n − 1), is replaced by V PV (n). After all iterations are done, the point that has the final value of P max and V MPP is the maximum power point. We can track the MPP timing by all these iterations. Figure 12 shows a simplified block diagram of the proposed FOCV that is composed of an α generator, which is an analog-digital converter based on the SAR algorithm, and a capacitor bank. With two inputs of V OC and V MPP , the α generator generates a digital n-bit signal, α< n : 1 >, that represents the ratio of V MPP to V OC based on the successive approximate register (SAR) algorithm. The relationship between these two signals can be expressed as

Proposed FOCV
where α is an n-bit digital signal.  Figure 12 shows a simplified block diagram of the proposed FOCV that is composed of an generator, which is an analog-digital converter based on the SAR algorithm, and a capacitor bank. With two inputs of and , the generator generates a digital n-bit signal, < : 1 >, that represents the ratio of to based on the successive approximate register (SAR) algorithm. The relationship between these two signals can be expressed as

Proposed FOCV
where is an n-bit digital signal.  Figure 13 shows the detailed block diagram of the capacitor bank circuit inside the proposed FOCV circuit as well as the internal capacitor array circuit. Variable capacitors and consist of a number of unit capacitor, . The relation between these capacitors can be expressed as where n is a natural number.  Figure 13 shows the detailed block diagram of the capacitor bank circuit inside the proposed FOCV circuit as well as the internal capacitor array circuit. Variable capacitors C X and C Y consist of a number of unit capacitor, C 0 . The relation between these capacitors can be expressed as C X + C Y = 2(2 n − 1)C 0 (12) where n is a natural number. The proposed FOCV circuit operates with two phases. In the first phase, switch S1 and switch S3 are closed, and switch S2 is open. Then, charges in . The energy charged in can be expressed as Equation (12).
In the second phase, the S1 and the S3 are open, and the S2 is closed, generating via charge sharing of . The energy charged in the and the can be expressed as Equation (13). The proposed FOCV circuit operates with two phases. In the first phase, switch S 1 and switch S 3 are closed, and switch S 2 is open. Then, V OC charges in C X . The energy charged in C X can be expressed as Equation (12).
In the second phase, the S 1 and the S 3 are open, and the S 2 is closed, generating αV OC via charge sharing of V OC . The energy charged in the C X and the C Y can be expressed as Equation (13).

Simulation Results
To validate the potentiality of the proposed FOCV MPPT algorithm, the proposed system is simulated with an electrically modeled PV cell that has the value of V OC and I SC , 3.79 V and 100 µA, respectively. Furthermore, α is set in 8-bit resolution in the proposed FOCV circuit for the 99.6% tracking efficiency of α The Cadence Spectre with TSMC 0.18 µm process parameters was used for SPICE (Integrated Circuit Emphasis) simulation. Figure   The proposed FOCV circuit operates with two phases. In the first phase, switch S1 and switch S3 are closed, and switch S2 is open. Then, charges in . The energy charged in can be expressed as Equation (12).
In the second phase, the S1 and the S3 are open, and the S2 is closed, generating via charge sharing of . The energy charged in the and the can be expressed as Equation (13).

Simulation Results
To validate the potentiality of the proposed FOCV MPPT algorithm, the proposed system is simulated with an electrically modeled PV cell that has the value of V and I SC , 3.79 V and 100 μA, respectively. Furthermore, is set in 8-bit resolution in the proposed FOCV circuit for the 99.6% tracking efficiency of The Cadence Spectre with TSMC 0.18 μm process parameters was used for SPICE (Integrated Circuit Emphasis) simulation. Figure

Experimental Results
The proposed FOCV MPPT circuit was in a 0.18-μm CMOS process. Figure 16 shows a microphotograph of the fabricated chip. The proposed FOCV MPPT circuit occupies an area of 750 × 300 μm 2 . Figure 17 shows the experimental setup. A 5-W LED lamp (Power

Experimental Results
The proposed FOCV MPPT circuit was in a 0.18-µm CMOS process. Figure 16 shows a microphotograph of the fabricated chip. The proposed FOCV MPPT circuit occupies an area of 750 × 300 µm 2 . Figure 17 shows the experimental setup.

Experimental Results
The proposed FOCV MPPT circuit was in a 0.18-μm CMOS process. Figure 16 shows a microphotograph of the fabricated chip. The proposed FOCV MPPT circuit occupies an area of 750 × 300 μm 2 . Figure 17 shows the experimental setup.    The measured MPP tracking waveforms and the operating voltages ( , , , and _ ) are shown in Figure 19. In Figure 19, the operating points of the PV cell track the MPP according to the proposed FOCV MPPT algorithm. Figure 20 shows the measured varying P-V characteristics and α of the PV cell    The measured MPP tracking waveforms and the operating voltages ( , , , and _ ) are shown in Figure 19. In Figure 19, the operating points of the PV cell track the MPP according to the proposed FOCV MPPT algorithm. Figure 20 shows the measured varying P-V characteristics and α of the PV cell The measured MPP tracking waveforms and the operating voltages (V PV , V MPP , P max , and P PV_PW M ) are shown in Figure 19. In Figure 19, the operating points of the PV cell track the MPP according to the proposed FOCV MPPT algorithm.         Figure 23 shows the measured varying P-V characteristics and α of the PV cell under varying illuminance conditions, from the normalized illuminance 1 to 1/16. Each illuminance step is quantized by the distance and the neutral-density filter and normalized by the Illuminance-1 that was measured under a 0.3-m distance between the PV cell and the LED lamp. As shown in Figure 23b, varies significantly from 0.69 to 0.79 depending on illuminance. Figure 24 illustrates comparison of the energy loss between the conventional and the proposed FOCV with the refreshing frequency, 0 , under varying illuminance over 13 h (Scenario III). In Figure 24, the energy loss caused by the conventional and the proposed FOCV are 585.58 mWs and 0.35 mWs, respectively. According to Figure 23 Figure 23 shows the measured varying P-V characteristics and α of the PV cell under varying illuminance conditions, from the normalized illuminance 1 to 1/16. Each illuminance step is quantized by the distance and the neutral-density filter and normalized by the Illuminance-1 that was measured under a 0.3-m distance between the PV cell and the LED lamp. As shown in Figure 23b, α varies significantly from 0.69 to 0.79 depending on illuminance. Figure 24 illustrates comparison of the energy loss between the conventional and the proposed FOCV with the refreshing frequency, f 0 , under varying illuminance over 13 h (Scenario III). In Figure 24, the energy loss caused by the conventional and the proposed FOCV are 585.58 mWs and 0.35 mWs, respectively. According to Figure 23 0.79 depending on illuminance. Figure 24 illustrates comparison of the energy loss between the conventional and the proposed FOCV with the refreshing frequency, 0 , under varying illuminance over 13 h (Scenario III). In Figure 24, the energy loss caused by the conventional and the proposed FOCV are 585.58 mWs and 0.35 mWs, respectively. According to Figure 23 Figure 25a, the energy loss in a PV cell depends on the refreshing frequency of , where refreshing frequencies are normalized by 0 . The energy dissipation of the proposed control is proportional to the refreshing frequency. The energy loss reaches to almost zero when the refreshing frequency is higher than or equal to one. The total energy loss of the system, including a PV cell and the MPPT control, is the sum of the energy loss and the dissipated chip energy. Figure 25b indicates that the total energy loss of the proposed system can be minimized when the refreshing frequency is one.   Figure 25a, the energy loss in a PV cell depends on the refreshing frequency of α, where refreshing frequencies are normalized by f 0 . The energy dissipation of the proposed control is proportional to the refreshing frequency. The energy loss reaches to almost zero when the refreshing frequency is higher than or equal to one. The total energy loss of the system, including a PV cell and the MPPT control, is the sum of the energy loss and the dissipated chip energy. Figure 25b indicates that the total energy loss of the proposed system can be minimized when the refreshing frequency is one. normalized by 0 . The energy dissipation of the proposed control is proportional to the refreshing frequency. The energy loss reaches to almost zero when the refreshing frequency is higher than or equal to one. The total energy loss of the system, including a PV cell and the MPPT control, is the sum of the energy loss and the dissipated chip energy. Figure 25b indicates that the total energy loss of the proposed system can be minimized when the refreshing frequency is one.

Conclusions
In this paper, an intermittent FOCV MPPT using an I-V curve tracer is proposed as a solution for energy loss caused by the mismatch of due to varying environmental conditions like temperature and illuminance. To minimize energy loss, the proposed FOCV MPPT system is designed to dynamically scan the I-V curve of a PV cell to detect the GMPP, not the local MPP, and intermittently reset the MPP for varying environmental

Conclusions
In this paper, an intermittent FOCV MPPT using an I-V curve tracer is proposed as a solution for energy loss caused by the mismatch of α due to varying environmental conditions like temperature and illuminance. To minimize energy loss, the proposed FOCV MPPT system is designed to dynamically scan the I-V curve of a PV cell to detect the GMPP, not the local MPP, and intermittently reset the MPP for varying environmental conditions. The proposed FOCV MPPT system sets α in 8-bit resolution. As the chip power consumption is relatively small compared to the PV cell rated power, the proposed FOCV MPPT system with a refreshing frequency higher than the environmental change substantially reduces the energy loss, by up to 99.9% as compared to a conventional FOCV, based on daily environmental conditions.