Continuous Battery Health Diagnosis by On-Line Internal Resistance Measuring

: Energy storage in an uninterruptible power supply (UPS) is one of the most frequent applications of batteries. This can be found in hospitals, communication centers, public centers, ships, trains, etc. Most frequent industrial methods for battery state-of health estimation require a technician to move to the battery’s location and, in some cases, require the use of heavy equipment and disconnection of the battery from the UPS. For example, in railway applications, trains must stop at the maintenance depot producing signiﬁcant total costs. This article proposes a new method to assess a battery’s health by measuring the battery’s internal resistance, based on the measurement of its voltage ripple in response to the current ripple imposed by the charger which in most UPS applications is permanently connected to the battery. Unlike most traditional methods, this system makes it possible a continuous on-line and on-board monitoring, and, therefore, it eases condition-based maintenance (CBM). To verify its viability, a low cost measuring prototype has been built and measurements in a railway battery with its charger have been carried out.


Introduction
Power plants, substations, communication centers and all fundamental services in general have uninterruptible power supply (UPS) systems to keep critical equipment operational in the event of a failure in the alternating current (AC) input power supply [1,2]. In the case of both marine and rail transport, UPS systems must also maintain the minimum comfort conditions in case of loss of the main power source.
The first UPS systems were based on generators powered by combustion engines. It was in the decade of the 1960s when the first UPS based on thyristors appeared. For example, in 1967 Toshiba built a 200 kVA UPS with lead-acid batteries for the air traffic control system of Tokyo International Airport [3].
In the 1970s, with the evolution of power semiconductors, the use of batteries in power plants became commonplace. It was a decade of a large number of scientific studies, publications and patents in the fields of measurement, diagnosis and modeling of batteries. For instance, [4] in May 1975, researchers from Bell Telephone Laboratories developed the idea of an international conference on telephone power energy systems, and three years later launched the International Telecommunications Energy Conference (INTELEC), which throughout its history has published a large number of technical articles about batteries.
In a UPS based on power semiconductors, batteries are the most critical components because they have to provide their stored energy promptly when required by the system, even when the battery has h. Coulomb counting [22][23][24]. i.
Battery maintenance in the industry is programmed according to battery manufacturers' recommendations and international standards [6][7][8][9][10]. Generally, monthly, quarterly and yearly consistencies are used, which include tests (b), (c) and (d) above. Test (a) is only used to confirm the status of a dubious battery, since it takes a long time and needs specific equipment. Methods (f) and (g) require introducing disturbances in the battery which are only possible using power electronics. Methods (h), (i) and (j) cannot be used in UPS batteries because the battery is floating and they require measurements of the discharge and charge currents as inputs.
The measurement of the battery internal resistance (e) (widespread in industry), is recommended by several battery manufacturers for maintenance as a method to estimate battery SOH and, in fact, several commercial equipment sets are available [8, 34,35]. Dr. Damlumd [11] studied the influence of different physical/chemical phenomena on the value of internal resistance, impedance and battery capacity. He concluded that internal resistance increases with the degradation of the battery, except in the case of internal short circuits or a temperature increase.
It is now generally accepted that the value of the battery internal resistance depends on the battery conditions, namely, its SOC, its temperature (resistance decreases as the battery temperature increases [16][17][18]), etc. and indicates the battery SOH [5,11,15]. In fact the use of the internal resistance, as an alternated inspection method, is proposed by the IEEE standard 450_2010 [7] for vented lead-acid (VLA) batteries and is also recommended by the IEEE standard 1188_2005 [10] for valve-regulate lead-acid (VRLA) batteries, specifying a quarterly measure and record of the internal resistance. These standard enphasizes that the internal ohmic values are useful as a trend characterization tool. To use these readings effectively, accurate baseline readings should be taken after about six months of battery operation. Notice that all methods (a-e) require a technician to move to the battery's location; whilst (e) also requires the use of heavy equipment and disconnection of the UPS battery. In the case of railways, trains must be stopped at the maintenance depot bringing very important cost and, very often, preventing an appropriate maintenance program.
In this paper, a new non-invasive method is proposed to measure battery's internal resistance continuously during its normal operation connected to a UPS, reducing human and operation costs which, eventually, should facilitate monitoring and maintenance programs. The proposed method is based on the fact that, in a UPS, the battery is usually connected permanently to the UPS charger [19], which imposes the current ripple of its output filter inductor on the battery (usually 10% of its average direct current (DC) output current value). By measuring this current ripple and the voltage ripple of the battery cells, the value of the internal resistance can be obtained and, therefore, the SOH can be determined. Although voltage and current ripples are very small and are surrounded by a very noisy environment, the main voltage and current harmonics of the rectification can be extracted using the Fourier Transform to calculate the battery's internal resistance.
On-line battery monitoring systems have already been proposed in the literature [19,36,37]. However, unlike in the proposed system, in all the cases spotted the authors had to introduce disturbances in the normal operation of the battery. For example, [37], based on (g) (HPPC), perturbing the battery with power pulses while [19,36], based on (f) (EIS), uses an electronic power converter to introduce disturbances with different frequencies.
To verify the feasibility of the proposed method, measurements have been carried out in the battery-charger unit of a metropolitan train of "Metro de Madrid". It will be shown that reliable results can be obtained, without perturbing the normal operation of the battery + charger system, using a low cost set-up based on a simple micro-controller. Since most modern micro-controllers can be easily interfaced with wireless communication systems, the proposed solution could transmit its information to a central maintenance system to make a continuous maintenance program possible. This feature is a clear advantage with respect to all "direct methods" listed above. "Computational methods" above are seldom used in practice in UPS batteries because they are not subject to charge-discharge cycles.

Description of the Method Proposed and Its Application
A typical battery-charger unit for a metropolitan train of "Metro de Madrid" is depicted in Figure 1. vented lead-acid (VLA) batteries and is also recommended by the IEEE standard 1188_2005 [10] for valve-regulate lead-acid (VRLA) batteries, specifying a quarterly measure and record of the internal resistance. These standard enphasizes that the internal ohmic values are useful as a trend characterization tool. To use these readings effectively, accurate baseline readings should be taken after about six months of battery operation. Notice that all methods (a-e) require a technician to move to the battery´s location; whilst (e) also requires the use of heavy equipment and disconnection of the UPS battery. In the case of railways, trains must be stopped at the maintenance depot bringing very important cost and, very often, preventing an appropriate maintenance program.
In this paper, a new non-invasive method is proposed to measure battery´s internal resistance continuously during its normal operation connected to a UPS, reducing human and operation costs which, eventually, should facilitate monitoring and maintenance programs. The proposed method is based on the fact that, in a UPS, the battery is usually connected permanently to the UPS charger [19], which imposes the current ripple of its output filter inductor on the battery (usually 10% of its average direct current (DC) output current value). By measuring this current ripple and the voltage ripple of the battery cells, the value of the internal resistance can be obtained and, therefore, the SOH can be determined. Although voltage and current ripples are very small and are surrounded by a very noisy environment, the main voltage and current harmonics of the rectification can be extracted using the Fourier Transform to calculate the battery´s internal resistance.
On-line battery monitoring systems have already been proposed in the literature [19,36,37]. However, unlike in the proposed system, in all the cases spotted the authors had to introduce disturbances in the normal operation of the battery. For example, [37], based on (g) (HPPC), perturbing the battery with power pulses while [19] and [36], based on (f) (EIS), uses an electronic power converter to introduce disturbances with different frequencies.
To verify the feasibility of the proposed method, measurements have been carried out in the battery-charger unit of a metropolitan train of "Metro de Madrid". It will be shown that reliable results can be obtained, without perturbing the normal operation of the battery + charger system, using a low cost set-up based on a simple micro-controller. Since most modern micro-controllers can be easily interfaced with wireless communication systems, the proposed solution could transmit its information to a central maintenance system to make a continuous maintenance program possible. This feature is a clear advantage with respect to all "direct methods" listed above. "Computational methods" above are seldom used in practice in UPS batteries because they are not subject to chargedischarge cycles.

Description of the Method Proposed and Its Application
A typical battery-charger unit for a metropolitan train of "Metro de Madrid" is depicted in Figure 1. The catenary feeds an inverter which supplies a three-phase transformer, with two output windings, one supplies the 380 Vac and 53 kVA and 50 Hz three-phase output to the train's AC The catenary feeds an inverter which supplies a three-phase transformer, with two output windings, one supplies the 380 Vac and 53 kVA and 50 Hz three-phase output to the train's AC auxiliary loads and the other output winding is rectified in order to obtain a 116 V and 7 kWDC output where the battery is connected.
The charger is a 60 kVA converter from the manufacturer SEPSA The battery is a vented lead acid (VLA) type, of 116 V and (C5) 120 Ah. It consists of 52 cells grouped in 9 containers and it is manufactured by EXIDE (type CLASSIC 52, 02EPZSQ0120S). The battery used to carry out the measurements was taken from a train due to its poor condition: it showed signs of sulfation and most of its cells had not passed the discharge test.
The current ripple and the voltage ripple in the battery when in floating connection to the converter have been measured in the laboratory. It has been verified that the current ripple depends on the load condition of the converter; Figure 2 shows the current and voltage ripples for minimum and maximum load. Figure 2a auxiliary loads and the other output winding is rectified in order to obtain a 116 V and 7 kWDC output where the battery is connected. The charger is a 60 kVA converter from the manufacturer SEPSA The battery is a vented lead acid (VLA) type, of 116 V and (C5) 120 Ah. It consists of 52 cells grouped in 9 containers and it is manufactured by EXIDE (type CLASSIC 52, 02EPZSQ0120S). The battery used to carry out the measurements was taken from a train due to its poor condition: it showed signs of sulfation and most of its cells had not passed the discharge test.
The current ripple and the voltage ripple in the battery when in floating connection to the converter have been measured in the laboratory. It has been verified that the current ripple depends on the load condition of the converter; Figure 2 shows the current and voltage ripples for minimum and maximum load. Figure 2a,b show battery current ripple and one-cell voltage ripple at low load (0 A), respectively, while Figure 2c,d show battery current ripple and one-cell voltage ripple at full load (60 A), respectively.
To analyze the ripples imposed by the converter on the battery, voltage and current ripples values have been captured with the Graphtec GL500A midi LOGGER. A sampling period of 8 μs has been used and 2 12 (4096) points have been captured. The harmonic of the waveforms were calculated using the fast Fourier transform (FFT), verifying that the main harmonic has a frequency of 300 Hz, corresponding to the three-phase uncontrolled rectification of a 50 Hz system.  To analyze the ripples imposed by the converter on the battery, voltage and current ripples values have been captured with the Graphtec GL500A midi LOGGER. A sampling period of 8 µs has been used and 2 12 (4096) points have been captured. The harmonic of the waveforms were calculated using the fast Fourier transform (FFT), verifying that the main harmonic has a frequency of 300 Hz, corresponding to the three-phase uncontrolled rectification of a 50 Hz system.
The harmonic contents of battery current and one-cell voltage ripples are detailed in Figure 3. Notice that, for the chosen number of sampling points (4096) and the sampling frequency (125 kHz), the frequency resolution of the harmonics calculated by the FFT is 30.5176 Hz and, therefore, the 300 Hz component appears shifted slightly towards the 10th FFT coefficient (305.1758 Hz) (Figure 3). The harmonic contents of battery current and one-cell voltage ripples are detailed in Figure 3. Notice that, for the chosen number of sampling points (4096) and the sampling frequency (125 kHz), the frequency resolution of the harmonics calculated by the FFT is 30.5176 Hz and, therefore, the 300 Hz component appears shifted slightly towards the 10th FFT coefficient (305.1758 Hz) (Figure 3).  The root-mean-square (RMS) values of voltage and current ripples were calculated using harmonics from the 5th (152.5879 Hz) to the 15th (457.7637 Hz) FFT coefficients. Since no significant inductance was expected, the battery's internal resistance was calculated dividing voltage RMS by current RMS. The results for the measurements over one cell were: 1.9490 mΩ, An ad hoc Capture + Master device (shown in Figure 4) has been built in order to automate the necessary measurements. The Capture unit (a) measures the average voltages of each cell, the voltage ripple in each cell and calculates its Fourier transform. The Master unit (b) is responsible for measuring the average current and the current ripple, calculating its Fourier transform, measuring the temperature of the battery, requesting the data from the Capture unit and saving all these data in a micro-SD card. In order to make a quick and economical design, commercial prototyping modules were chosen. Both units are based on the Arduino DUE board [38] that mounts an Atmel SMART SAM38E micro-controller (MCU) based on the ARM Cortex-M3 RISC 32-bit processor. It operates at a maximum speed of 84 MHz and features up to 512 kbytes of Flash memory and up to 100 kbytes of Static Random Access Memory (SRAM). The peripheral set includes a 12-bit ADC at 1 MHz conversion rate, which permits a sampling period of 8 μs. Calculations have been carried out with 2 13 (8192) points. The Master unit also incorporates a DS3231 real-time clock and a digital thermometer DS18B20 12-bit with 1-wire bus communication. Both units incorporate a 2.4 GHz wireless module NRF24L01 to communicate with each other and operational amplifiers to adjust measurements gains to the margin available in the ADC (Figure 4).  The root-mean-square (RMS) values of voltage and current ripples were calculated using harmonics from the 5th (152.5879 Hz) to the 15th (457.7637 Hz) FFT coefficients. Since no significant inductance was expected, the battery's internal resistance was calculated dividing voltage RMS by current RMS. The results for the measurements over one cell were: An ad hoc Capture + Master device (shown in Figure 4) has been built in order to automate the necessary measurements. The Capture unit (a) measures the average voltages of each cell, the voltage ripple in each cell and calculates its Fourier transform. The Master unit (b) is responsible for measuring the average current and the current ripple, calculating its Fourier transform, measuring the temperature of the battery, requesting the data from the Capture unit and saving all these data in a micro-SD card. In order to make a quick and economical design, commercial prototyping modules were chosen. Both units are based on the Arduino DUE board [38] that mounts an Atmel SMART SAM38E micro-controller (MCU) based on the ARM Cortex-M3 RISC 32-bit processor. It operates at a maximum speed of 84 MHz and features up to 512 kbytes of Flash memory and up to 100 kbytes of Static Random Access Memory (SRAM). The peripheral set includes a 12-bit ADC at 1 MHz conversion rate, which permits a sampling period of 8 µs. Calculations have been carried out with 2 13 (8192) points. The Master unit also incorporates a DS3231 real-time clock and a digital thermometer DS18B20 12-bit with 1-wire bus communication. Both units incorporate a 2.4 GHz wireless module NRF24L01 to communicate with each other and operational amplifiers to adjust measurements gains to the margin available in the ADC (Figure 4). conversion rate, which permits a sampling period of 8 μs. Calculations have been carried out with 2 13 (8192) points. The Master unit also incorporates a DS3231 real-time clock and a digital thermometer DS18B20 12-bit with 1-wire bus communication. Both units incorporate a 2.4 GHz wireless module NRF24L01 to communicate with each other and operational amplifiers to adjust measurements gains to the margin available in the ADC (Figure 4). The Capture unit, by means of solid state opto-relays, connects its ground (GND) to the negative terminal of each cell to be measured ( Figure 5) the measurement is made by means of pairs of twisted cables to simplify the assembly. To keep the wiring simple, a Capture unit is mounted for each group of 6 cells, giving a total of 9 Capture units for the 52-cell battery. Figure 6 shows the installation in the first group of 6 cells together with the Master and the first Capture unit. The temperature sensor measures the temperature of the cell container and it is placed between cells V1, V2, V5 and V6 at medium depth.  The Capture unit, by means of solid state opto-relays, connects its ground (GND) to the negative terminal of each cell to be measured ( Figure 5) the measurement is made by means of pairs of twisted cables to simplify the assembly. To keep the wiring simple, a Capture unit is mounted for each group of 6 cells, giving a total of 9 Capture units for the 52-cell battery. Figure 6 shows the installation in the first group of 6 cells together with the Master and the first Capture unit. The temperature sensor measures the temperature of the cell container and it is placed between cells V1, V2, V5 and V6 at medium depth.

Results
The proposed measurement system makes possible a continuous monitoring of a battery without disturbing its normal operation.
In the prototype built, a measurement time span of around 5 min has been set, and measured data are recorded in a micro-SD card. In a future design, the time span will be programmable and the data will be sent by radio or by wireless modules (Wi-Fi, 4G, etc.) for remote and continuous condition-based maintenance (CBM) while batteries are on board of the trains.
The measurements made in the laboratory began on 15 February 2019 with a load of 10 A in the UPS. The tests were stopped at 19:00 and the battery was disconnected during the weekend. On   The Capture unit, by means of solid state opto-relays, connects its ground (GND) to the negative terminal of each cell to be measured ( Figure 5) the measurement is made by means of pairs of twisted cables to simplify the assembly. To keep the wiring simple, a Capture unit is mounted for each group of 6 cells, giving a total of 9 Capture units for the 52-cell battery. Figure 6 shows the installation in the first group of 6 cells together with the Master and the first Capture unit. The temperature sensor measures the temperature of the cell container and it is placed between cells V1, V2, V5 and V6 at medium depth.

Results
The proposed measurement system makes possible a continuous monitoring of a battery without disturbing its normal operation.
In the prototype built, a measurement time span of around 5 min has been set, and measured data are recorded in a micro-SD card. In a future design, the time span will be programmable and the data will be sent by radio or by wireless modules (Wi-Fi, 4G, etc.) for remote and continuous condition-based maintenance (CBM) while batteries are on board of the trains.
The measurements made in the laboratory began on 15 February 2019 with a load of 10 A in the UPS. The tests were stopped at 19:00 and the battery was disconnected during the weekend. On

Results
The proposed measurement system makes possible a continuous monitoring of a battery without disturbing its normal operation. In the prototype built, a measurement time span of around 5 min has been set, and measured data are recorded in a micro-SD card. In a future design, the time span will be programmable and the data will be sent by radio or by wireless modules (Wi-Fi, 4G, etc.) for remote and continuous condition-based maintenance (CBM) while batteries are on board of the trains.
The measurements made in the laboratory began on 15 February 2019 with a load of 10 A in the UPS. The tests were stopped at 19:00 and the battery was disconnected during the weekend. On Monday 18, the battery was reconnected without load in the UPS (load 0 A); at 10:30, the load in the UPS was changed from 0 A to 45 A, and at 12:00 the load was reduced to 10 A. Figure 7 shows the variation of the internal resistance of each cell (RV1 to RV6) together with the battery temperature, the sharp temperature drop is due to the fact that the test was stopped during the weekend, as well as the effect of the laboratory's heating system.   The data stored should allow maintenance personal to carry out a number of statistical studies of the variation of the battery parameters when a condition varies or when the battery status changes. For example, with data of Figure 7, it is possible to calculate the variation of the internal average resistance of each cell (RV1 to RV6) with temperature, its regression line, its prediction errors and its Pearson coefficient (Figures 9 and 10). It is verified that the internal resistance presents a strong linear correlation with temperature, with values of the Pearson coefficient (R 2 ) greater than 0.93 and a maximum prediction error less than ±38.7 μΩ (±2.1%) (in RV4 at 22 °C).    Figure 8 shows the variation of the average floating voltage of each cell (V1_ave to V6_ave) and the battery charging current when the battery is connected to the UPS and load changes. The current peak is due to the battery being discharged during the weekend when the UPS was switched off.
Energies 2019, 12, x 7 of 13 Figure 8 shows the variation of the average floating voltage of each cell (V1_ave to V6_ave) and the battery charging current when the battery is connected to the UPS and load changes. The current peak is due to the battery being discharged during the weekend when the UPS was switched off.  The data stored should allow maintenance personal to carry out a number of statistical studies of the variation of the battery parameters when a condition varies or when the battery status changes. For example, with data of Figure 7, it is possible to calculate the variation of the internal average resistance of each cell (RV1 to RV6) with temperature, its regression line, its prediction errors and its Pearson coefficient (Figures 9 and 10). It is verified that the internal resistance presents a strong linear correlation with temperature, with values of the Pearson coefficient (R 2 ) greater than   The data stored should allow maintenance personal to carry out a number of statistical studies of the variation of the battery parameters when a condition varies or when the battery status changes. For example, with data of Figure 7, it is possible to calculate the variation of the internal average resistance of each cell (RV1 to RV6) with temperature, its regression line, its prediction errors and its Pearson coefficient (Figures 9 and 10). It is verified that the internal resistance presents a strong linear correlation with temperature, with values of the Pearson coefficient (R 2 ) greater than 0.93 and a maximum prediction error less than ±38.7 µΩ (±2.1%) (in RV4 at 22 • C).

Discussion
To verify the results, the same resistance measurements for each of the 6 cells were also carried out at a fixed temperature of 22 °C, to avoid the effect of variation with temperature, by the commercial equipment for battery resistance testing MEGGER BITE 2P [34], commonly used in battery maintenance. It uses an AC current of 8 A and 50 Hz, and measures the voltage response of the battery. The accuracy for the impedance measurement is ±0.3% and ±0.1% for the voltage measurement.
The differences between the BITE 2P and the proposed measurement system are:


The BITE performs the measurement at a mains frequency of 50 Hz, while the proposed measurement system performs measurements at UPS current ripple frequency, which is 300 Hz (Figure 3).  The BITE needs to disconnect the battery from the UPS, to inject the measurement current, while the proposed measurement system performs measurements while the battery is working connected to the UPS.
The influence of the frequency of measurement on the value obtained for the internal resistance has been widely studied [19,20,36,39]. Figure 11 shows an effective RC circuit model for the frequency range of 10 −1 Hz to 1 kHz where Rs models all conductive effects of the battery, Rct is the plate charge transfer resistance and Cdl is the electro-chemical double layer capacitance [19]. For example, [39] shows that above 100 Hz the measurement corresponds to the internal series resistance because the capacitor has a low resistance, negligible compared to the series resistance Rs.

Discussion
To verify the results, the same resistance measurements for each of the 6 cells were also carried out at a fixed temperature of 22 • C, to avoid the effect of variation with temperature, by the commercial equipment for battery resistance testing MEGGER BITE 2P [34], commonly used in battery maintenance. It uses an AC current of 8 A and 50 Hz, and measures the voltage response of the battery. The accuracy for the impedance measurement is ±0.3% and ±0.1% for the voltage measurement.
The differences between the BITE 2P and the proposed measurement system are: • The BITE performs the measurement at a mains frequency of 50 Hz, while the proposed measurement system performs measurements at UPS current ripple frequency, which is 300 Hz (Figure 3).

•
The BITE needs to disconnect the battery from the UPS, to inject the measurement current, while the proposed measurement system performs measurements while the battery is working connected to the UPS.
The influence of the frequency of measurement on the value obtained for the internal resistance has been widely studied [19,20,36,39]. Figure 11 shows an effective RC circuit model for the frequency range of 10 −1 Hz to 1 kHz where R s models all conductive effects of the battery, R ct is the plate charge transfer resistance and C dl is the electro-chemical double layer capacitance [19]. For example, [39] shows that above 100 Hz the measurement corresponds to the internal series resistance because the capacitor has a low resistance, negligible compared to the series resistance R s . (Figure 3).  The BITE needs to disconnect the battery from the UPS, to inject the measurement current, while the proposed measurement system performs measurements while the battery is working connected to the UPS.
The influence of the frequency of measurement on the value obtained for the internal resistance has been widely studied [19,20,36,39]. Figure 11 shows an effective RC circuit model for the frequency range of 10 −1 Hz to 1 kHz where Rs models all conductive effects of the battery, Rct is the plate charge transfer resistance and Cdl is the electro-chemical double layer capacitance [19]. For example, [39] shows that above 100 Hz the measurement corresponds to the internal series resistance because the capacitor has a low resistance, negligible compared to the series resistance Rs. Measurements with MEGGER BITE 2P are compared in Table 1 with those obtained with the equipment developed for the 6 cells (V1 to V2) at the same temperature of 22 • C. Differences in Table 1 are due to the different frequency used, as explained above. According to Figure 11, the double-layer capacitance C dl can be calculated that correlates the two measures at different frequency, assuming that the measurements performed at 300 Hz correspond to Rs, as has been argued, and a plate charge transfer resistance R ct value of 12 Ω has been taken.   There is a relationship between cells with the highest resistance, the lowest capacitance and the lower flotation voltage. This result coincides with the results presented in [5], where the variation of the internal parameters of the battery is studied with its degradation for different reasons.
Given the cell resistance measured in both methods, one should conclude that cells 1, 2 and 4 to 6 are equally deteriorated while cell 3, although unhealthy, has the best SOH of all. Note that a healthy cell is expected to show an internal resistance below 1.250 mΩ at 22 • C.

Conclusions
A new method has been proposed to measure a battery's internal resistance continuously and non-invasively in a UPS system. This parameter is widely accepted to estimate a battery state-of-health. Unlike popular direct methods, the procedure proposed does not require a disturbance in the battery's normal operation. The new system can placed on board a train, which makes it possible to automatize measurements and send several parameters of each battery cell (internal resistance, float voltage, float current, temperature) through a wireless channel (Wi-Fi, 4G, etc.) to the maintenance center. This is a key step to facilitate battery CBM, without having to stop the train carrying out manual measurements.
The new measurement system has been tested in the laboratory, registering the values of 6 cells under different temperature and charging current conditions. The measures with the proposed system have been shown to be repetitive and obtained the same values in different days, even after the system has been turned off for 48 h. The values obtained with the proposed system have been compared with those obtained with a commercial equipment. The differences found are due to the difference in the measurement frequency, and it is shown that, qualitatively, the two systems give the same results in terms of SOH of the measured cells.
As an example of a possible use for the data obtained, the variation of the internal resistance with temperature has been analyzed, finding a strong linear correlation with R 2 greater than 0.93 and a maximum prediction error less than ±2.1%. This analysis carried out with the current systems would have required a technician to spend a working day performing test, having to disconnect the battery from the UPS to be able to take measurements and reconnecting the battery to avoid the influence of self-discharge in the measurements. The proposed system makes it possible to obtain information that would otherwise be very difficult to obtain, such as the variation of the internal resistance when the battery is being charged, or the correlation between the internal resistance and the cell voltage in flotation and charging.