Comparison of the Moist Material Relative Permittivity Readouts Using the Non-Invasive Reflectometric Sensors and Microwave Antenna

The article concerns the issue of non-invasive moisture sensing in building materials. Two techniques that enable evaluating the value of the relative permittivity of the material, being the measure of porous material moisture, have been utilized for the research. The first is the microwave technique that utilizes the non-contact measurement of velocity of microwave radiation across the tested material and the second is the time domain reflectometry (TDR) technique based on the measurement of electromagnetic pulse propagation time along the waveguides, being the elements of sensor design. The tested building material involved samples of red ceramic brick that differed in moisture, ranging between 0% and 14% moisture by weight. The main goal of the research was to present the measuring potential of both techniques for moisture evaluation as well as emphasize the advantages and disadvantages of each method. Within the research, it was stated that both methods provide similar measuring potential, with a slight advantage in favor of a microwave non-contact sensor over surface TDR sensor designs.


Problem of Moisture Presence in the Building Envelopes
Water presence in building envelopes is a typical phenomenon that can be a serious exploitation problem. It may occur in historical buildings, but also in newly built houses. The major sources of water presence are: inappropriate building construction, poor ventilation, as well as failures of water supply systems and flooding [1][2][3][4].
Water can appear inside the envelopes under several forms. It may be present as free water, chemically bound water, physically bound water, and water vapor, condensation and capillary water [5,6]. Free water is the factor which has the greatest influence on the performance of objects and most harmful for buildings. When contained inside the envelopes, it may enhance the value of material thermal conductivity coefficient [7,8], significantly influencing the energetic performance of the buildings [9]. The water present in building barriers can be also divided into condensation water and capillary water. The source of the condensation water is a lack or improper performance of the ventilation system. On the other hand, the presence of the capillary water mainly means the influence of ground water rise in the porous structure of the material and lack or destruction of the horizontal or vertical water-proof isolation [10][11][12][13][14][15].
where ε r denotes the real part of relative permittivity of medium, ε r the imaginary part of relative permittivity of medium, i the imaginary unit (i 2 = −1), σ 0 the electrical conductivity [S/m], ε 0 the permittivity of vacuum (ε 0 = 8.85 × 10 −12 F/m), and ω the angular frequency of the external electric field [rad/s]. The operating frequencies of microwave and reflectometric techniques utilized in the presented research reach the values between 1 and 8 GHz [44], which are high enough to decrease the influence of the imaginary part on the total value of the complex permittivity of examined medium, even if loaded with some ionic conductivity. Thus, it can be assumed that the ionic conductivity has low effect on the microwave as well as reflectometric moisture readouts. Salinity diminishes the pulse energy and the measuring markers are flatter. This feature can be also positively utilized for salinity evaluation of moist material, based on suitable signal attenuation interpretation [47].

Time Domain Reflectometry Technique for Evaluation of Moist Material Relative Permittivity Value
Time domain reflectometry (TDR) is an electric technique that utilizes the measurement of relative permittivity to evaluate the moisture of porous materials [33]. Measurement using this method consists in determining the travel time of the electromagnetic pulse along the rods of TDR probes inserted into the examined material. TDR probes usually consist of a coaxial cable, head, and measuring rods embedded in the tested material. The readings are based on marking the reflections on the individual discontinuities of the sensor waveguide, which are part of the sensor design. Typically, the described discontinuities are at the beginning and end of the probe. In detail, the performance of the TDR technique is described in the following articles [42,[48][49][50].
Another approach to moisture evaluation, especially in rigid porous media such as building materials, is presented by surface, non-invasive sensors that are described in many studies [36,[51][52][53][54][55][56]. Surface sensors are utilizable for moisture detection without the necessity of introducing the sensing elements inside the material. In comparison to traditional invasive probes, they provide worse accuracy and smaller sensitivity; on the other hand, they provide the readouts without changing the structure of the material.
The TDR method uses two types of pulses emitted by pulse generators: a stepped pulse [34] and a needle pulse [57]. The data collected by a TDR multimeter from the sensing probe consists in set of voltages distributed in time, called waveforms or reflectograms. In this research, a needle pulse generator with a rise time of 300 ps [57,58] that is more widely described in Section 2 and the exemplary waveforms achieved in the research are presented in Section 3. Waveform interpretation focused on the recognition of signal disturbances and propagation time enables to evaluate the relative permittivity of the materials according to the following formula [57]: where c denotes the velocity of light in vacuum [m/s], t p the time of signal propagation [s], and L the distance between to marked points of the TDR sensor [m]. Establishing the value of the relative permittivity enables to evaluate the moisture of the material by applying theoretical or physical models available in literature [59][60][61] or individual calibration based on experimental tests [34,48,[62][63][64].

Microwave Measurement Technique to Evaluate the Permittivity Value of the Moist Material
Application of microwave techniques for the determination of the permittivity of a material may be divided into three approaches. The first is the use of special measurement setup, mainly based on a microwave resonator. In this approach, a microwave resonating circuit, most frequently a cavity one, is loaded with a small sample of the investigated material [65]. The sample should be small enough or with low losses, in order to cause only a small disturbance of the electric field distribution inside a resonating cavity. This approach is called the field perturbation method. The resonator is connected as a two-port to the measurement setup, which most frequently is based on vector network analyzer (VNA). The measurement procedure relies on finding the transmittance versus frequency characteristics. Then, the modulus of S 21 scattering parameter along the frequency carries the information about the resonance frequency value and the quality factor (Q-factor). There is a mathematical procedure to derive the values of sample permittivity from the measurements of resonant frequency shift and Q-factor values. However, this method requires physical contact with the material sample. Moreover, the sample must have a specific shape related to the resonator type (i.e., thin slab, cylinder, or powdered form). Non-destructive measurements in situ are not feasible.
The second common way is the use of a set of two antennas and performing the transmittance measurement through a sample or a full masonry wall. Then, the concept relies on the derivation of permittivity from the measurement results performed for the S 21 scattering parameter. In this approach, there is an obvious need for accessing both sides of the measured object. Moreover, the calibration procedure is complicated here, and the method is sensitive to object thickness as well as the distance of antennas to the sample [66,67].
The third way is similar to the concept above but relies on the measurement of the reflection coefficient. In that case, only one antenna is needed, and the thickness of the sample may be different. The measurement of the complex value of reflectance S 11 gives the information about material intrinsic impedance and complex permittivity [46].
For the purposes of this work, the authors have chosen the concept of reflection coefficient measurement with the use of wideband antenna and VNA. The antenna is connected to only one port of the VNA (in the diagram connection marked with the symbol "•" at port 1). After initial calibration the remaining ports of the VNA are not used during the tests (marked as "×" in the diagram). This approach allows measuring a building material sample with real thickness in a non-contact and non-destructive way. The diagram presenting the applied measurement technique is shown in Figure 1.
only a small disturbance of the electric field distribution inside a resonating cavity. This approach is called the field perturbation method. The resonator is connected as a two-port to the measurement setup, which most frequently is based on vector network analyzer (VNA). The measurement procedure relies on finding the transmittance versus frequency characteristics. Then, the modulus of S21 scattering parameter along the frequency carries the information about the resonance frequency value and the quality factor (Q-factor). There is a mathematical procedure to derive the values of sample permittivity from the measurements of resonant frequency shift and Q-factor values. However, this method requires physical contact with the material sample. Moreover, the sample must have a specific shape related to the resonator type (i.e., thin slab, cylinder, or powdered form). Nondestructive measurements in situ are not feasible.
The second common way is the use of a set of two antennas and performing the transmittance measurement through a sample or a full masonry wall. Then, the concept relies on the derivation of permittivity from the measurement results performed for the S21 scattering parameter. In this approach, there is an obvious need for accessing both sides of the measured object. Moreover, the calibration procedure is complicated here, and the method is sensitive to object thickness as well as the distance of antennas to the sample [66,67].
The third way is similar to the concept above but relies on the measurement of the reflection coefficient. In that case, only one antenna is needed, and the thickness of the sample may be different. The measurement of the complex value of reflectance S11 gives the information about material intrinsic impedance and complex permittivity [46].
For the purposes of this work, the authors have chosen the concept of reflection coefficient measurement with the use of wideband antenna and VNA. The antenna is connected to only one port of the VNA (in the diagram connection marked with the symbol "•" at port 1). After initial calibration the remaining ports of the VNA are not used during the tests (marked as "×" in the diagram). This approach allows measuring a building material sample with real thickness in a non-contact and non-destructive way. The diagram presenting the applied measurement technique is shown in Figure 1. In this article, two sensing methods of non-invasive moisture detection have been compared for their efficiency to evaluate moisture in building materials. With the conducted research, the advantages and disadvantages of both reflectometric and microwave techniques have been revealed. In this article, two sensing methods of non-invasive moisture detection have been compared for their efficiency to evaluate moisture in building materials. With the conducted research, the advantages and disadvantages of both reflectometric and microwave techniques have been revealed.

Samples Preparation
For the experiment, solid ceramic brick was used as a representative material widely employed for erecting the masonries. The bricks delivered from one production cycle have been used for the tests, in order to minimize technological influence on the results. The bricks subjected to the tests were characterized by a mass water absorption of approximately 14% mass . The aim was to prepare the samples with specific levels of absorbed water. This parameter was graded in 1% steps (15 bricks were prepared: each ranging from 0% to 14% of the gravimetric water content). In order to obtain specific gravimetric moisture status, the dry brick was evenly saturated with a suitable amount of water, controlling the mass using a laboratory scale, and then it was tightly wrapped in polyethylene foil so that the moisture has become evenly distributed over the entire volume of the brick. The seasoning period equaled 30 days. It was decided to prepare one sample for a given gravimetric water content, while five measurements were performed on each brick using both reflectometric and microwave methods. The mass moisture content w [%] is the mass of water absorbed by the material divided by the mass of dry material, in accordance with the formula [68]: where m wet is the mass of brick in wet state [g] and m dry is the mass of brick in dry state [g]. Table 1 shows the brick apparent density and water dosage to obtain the assumed mass moisture content.

Time Domain Reflectometry Measuring Setup
For the time domain reflectometry tests, the following elements were utilized: LOM TDR multimeter (ETest, Lublin, Poland), PC computer as controlling station and for data acquisition, as well as TDR surface sensors of own design connected with the TDR multimeter by a coaxial cable. Both applied TDR sensors are widely presented in authors' article [56] and they differ in measuring waveguides spacing, where one (Sensor A) has the distance between them equal 40 mm and the other (Sensor B) 80 mm. Both sensors are made of the polyoxymethylene having apparent permittivity value equal 3.8. Waveguides are made of brass plate bars, 10 × 2 mm in dimension and 200 mm long, that are soldered to a two-line printed circuit which connects them to BNC con-nector for coaxial cable. Figure 2 presents the photographs of both sensors. made of brass plate bars, 10 × 2 mm in dimension and 200 mm long, that are soldered to a two-line printed circuit which connects them to BNC con-nector for coaxial cable. Figure  2 presents the photographs of both sensors.

Microwave Measuring Setup
The microwave measuring setup used in this work consisted of a VNA model Agilent N5224A and a double-ridge pyramidal horn antenna. The antenna was placed at a distance of 8 cm from the sample surface. The surrounding area was covered by microwave absorbing materials in order to ensure reflection-free conditions. A picture of the meas-

Microwave Measuring Setup
The microwave measuring setup used in this work consisted of a VNA model Agilent N5224A and a double-ridge pyramidal horn antenna. The antenna was placed at a distance of 8 cm from the sample surface. The surrounding area was covered by microwave absorbing materials in order to ensure reflection-free conditions. A picture of the measurement setup is shown in Figure 3.

Microwave Measuring Setup
The microwave measuring setup used in this work consisted of a VNA model Agilen N5224A and a double-ridge pyramidal horn antenna. The antenna was placed at a dis tance of 8 cm from the sample surface. The surrounding area was covered by microwav absorbing materials in order to ensure reflection-free conditions. A picture of the meas urement setup is shown in Figure 3.

Reflectometric Investigation
Research has been conducted under constant temperature conditions 20 ± 1 °C an air relative humidity at the level of 50%. All samples in the range of moisture between dr 0%mass and fully saturated material 14%mass were examined by two types of TDR non-in vasive sensors (Sensors A and B) described in Section 2.2 which differed in width. Fo statistical analysis, the measurements were repeated 5 times for each sensor and materia sample.

Microwave Investigation
Investigations of the prepared bricks with the use of microwave measuring metho have been conducted according to the scheme presented in Figure 1 and the test-be shown in Figure 3.

Reflectometric Investigation
Research has been conducted under constant temperature conditions 20 ± 1 • C and air relative humidity at the level of 50%. All samples in the range of moisture between dry 0% mass and fully saturated material 14% mass were examined by two types of TDR non-invasive sensors (Sensors A and B) described in Section 2.2 which differed in width. For statistical analysis, the measurements were repeated 5 times for each sensor and material sample.

Microwave Investigation
Investigations of the prepared bricks with the use of microwave measuring method have been conducted according to the scheme presented in Figure 1 and the test-bed shown in Figure 3.
The VNA has been calibrated for the use of one port S 11 measurements. The frequency range has been set as from 1 GHz to 11 GHz. The measurements results are in the form of complex values of reflection coefficient S 11 (magnitude and angle), which are instantly recalculated by VNA to time domain. This allows visualizing the sounding wideband pulse reflected from inhomogeneities of the media along the wave propagation direction.
The main reflected peak is caused by the impedance difference between the air and the brick surface (the wave entering the brick material). The next significant peak is created by the reflection of the wave exiting the brick on the opposite side (the same boundary, material-air). The distance between these peaks in time domain carries the information of propagation time inside the brick material, the value is doubled due to round-trip propagation. As the brick thickness is known, the wave propagation velocity inside the brick material, and the real part of relative permittivity of the material, may be calculated.
The measurements of the prepared bricks have been performed for the whole brick set. For the purposes of statistical processing, all single brick measurements have been repeated 5 times.

Data Analysis Method
The results achieved with the conducted research consist of the dependences between material mass moisture of the examined material sample and apparent permittivity readouts achieved by both TDR sensors and microwave antennas.
With these results, suitable regression models were applied and measurement uncertainty evaluation was conducted according to GUM guide [GUM] [69].
For calibration, polynomial dependence was applied according to the following formula [55]: whereŵ denotes mass moisture value estimated using polynomial model [% mass ], ε the apparent permittivity measured using TDR, and the random error of normal distribution. According to many articles [63,70,71] uncertainty was expressed as root mean squared error (RMSE), which allows expressing model uncertainty and quality of model fit to the measured data.
Uncertainty evaluation covers evaluation of combined uncertainty, being the combination of two types of uncertainties: A type, i.e., the statistical uncertainty that is dependent on fitting quality of the assumed model as well as uncertainty of B type, dependent on both uncertainties and resolutions of particular devices. With the combined standard uncertainty, the expanded measuring uncertainty was estimated.
For all applied measuring methods, the B type uncertainties are significantly lower than the A type uncertainty and neglected in the calculation, so the following elements are considered for uncertainty evaluation: β 0 , β 1 , β 2 estimators, and the relative permittivity (ε): The above-mentioned combined standard measurement uncertainty that includes both A and B type uncertainties can be described using the following formula [69,72]: so: And the expanded uncertainty with the following formula: where k p denotes the coverage factor that depends on the number of degrees of freedom and oscillates about 2 in value.

Results
Raw results achieved from both reflectometric multimeter and microwave analyzer are presented in the form of the waveforms that needed suitable interpretation to evaluate the relative permittivity value.

TDR Sensors Readouts
Exemplary reflectograms achieved by TDR Sensor A and Sensor B for dry and saturated status are presented in Figures 4 and 5. the relative permittivity value.

TDR Sensors Readouts
Exemplary reflectograms achieved by TDR Sensor A and Sensor B for dry rated status are presented in Figures 4 and 5.  The peaks indicated by black dots are markers for electromagnetic pulse tr the waveguides touching the examined material. In both figures, the first, ne shows the entrance to the sensor (built-in resistor) and the second (positive) o termination. The position of this second peak is significant for relative permit uation. In the case of dry material (blue line), the second position is located cl first, negative peak. In the case of moist material (red line), second peak is locat the relative permittivity value.

TDR Sensors Readouts
Exemplary reflectograms achieved by TDR Sensor A and Sensor B for dry rated status are presented in Figures 4 and 5.  The peaks indicated by black dots are markers for electromagnetic pulse tr the waveguides touching the examined material. In both figures, the first, ne shows the entrance to the sensor (built-in resistor) and the second (positive) o termination. The position of this second peak is significant for relative permitt uation. In the case of dry material (blue line), the second position is located cl first, negative peak. In the case of moist material (red line), second peak is locat The peaks indicated by black dots are markers for electromagnetic pulse travel along the waveguides touching the examined material. In both figures, the first, negative one shows the entrance to the sensor (built-in resistor) and the second (positive) one, sensor termination. The position of this second peak is significant for relative permittivity evaluation. In the case of dry material (blue line), the second position is located closer to the first, negative peak. In the case of moist material (red line), second peak is located further. Within the measurement, a set of the TDR waveforms was collected and the distances between markers were recalculated into the relative permittivity values according to the Equation (2). Figures 6 and 7 present the recalculated times of signal propagation into relative permittivity values for different material humidity, showing the relations between red brick mass moisture and relative permittivity values, whereas dashed lines mean confidence intervals. Red dots represent the mean values of the five relative permittivity readouts for each material moisture content. between markers were recalculated into the relative permittivity values according to the Equation (2). Figures 6 and 7 present the recalculated times of signal propagation into relative permittivity values for different material humidity, showing the relations between red brick mass moisture and relative permittivity values, whereas dashed lines mean confidence intervals. Red dots represent the mean values of the five relative permittivity readouts for each material moisture content.

Microwave Readouts
Similarly to reflectometric readouts, the waveforms achieved from microwave measurement are presented in Figure 8. between markers were recalculated into the relative permittivity values according to the Equation (2). Figures 6 and 7 present the recalculated times of signal propagation into relative permittivity values for different material humidity, showing the relations between red brick mass moisture and relative permittivity values, whereas dashed lines mean confidence intervals. Red dots represent the mean values of the five relative permittivity readouts for each material moisture content.

Microwave Readouts
Similarly to reflectometric readouts, the waveforms achieved from microwave measurement are presented in Figure 8.

Microwave Readouts
Similarly to reflectometric readouts, the waveforms achieved from microwave measurement are presented in Figure 8. The positive peaks highlighted by using black dots are the markers for electromagnetic pulse travel. This time, the first peak is the reflection from the first brick surface and the second peak represents the back of the material. The first peaks are located more or The positive peaks highlighted by using black dots are the markers for electromagnetic pulse travel. This time, the first peak is the reflection from the first brick surface and the second peak represents the back of the material. The first peaks are located more or less in a similar position. In turn, the second peaks are shifted towards the right, depending on the moisture status of the material. In the case of moist material (9% mass ), the second peak is shifted towards the right, compared to drier brick (3% mass ). The two peaks below 1ns are associated with the pulse response of the antenna structure and do not influence the measurement of a distant object. Figure 9 presents the relation between red brick mass moisture and the relative permittivity values derived from measurements. The positive peaks highlighted by using black dots are the markers for electromagnetic pulse travel. This time, the first peak is the reflection from the first brick surface and the second peak represents the back of the material. The first peaks are located more or less in a similar position. In turn, the second peaks are shifted towards the right, depending on the moisture status of the material. In the case of moist material (9%mass), the second peak is shifted towards the right, compared to drier brick (3%mass). The two peaks below 1ns are associated with the pulse response of the antenna structure and do not influence the measurement of a distant object. Figure 9 presents the relation between red brick mass moisture and the relative permittivity values derived from measurements.

Discussion
With the data obtained using reflectometry and microwave measurements, some dependencies have been found and described with empirical second order polynomial regression formulas.

Regression Models
In the case of both TDR sensors and microwave antenna, together with the moisture increase, a relative permittivity increase is noticed. For dry samples, average permittivity readouts show the value of 4 in the case of TDR sensor A and 4.5 for TDR sensor B. For saturated states, the permittivity readouts are equal to 8 for sensor A and 8.5 for sensor B. In the case of the microwave antenna for dry material, the measured level of relative

Discussion
With the data obtained using reflectometry and microwave measurements, some dependencies have been found and described with empirical second order polynomial regression formulas.

Regression Models
In the case of both TDR sensors and microwave antenna, together with the moisture increase, a relative permittivity increase is noticed. For dry samples, average permittivity readouts show the value of 4 in the case of TDR sensor A and 4.5 for TDR sensor B. For saturated states, the permittivity readouts are equal to 8 for sensor A and 8.5 for sensor B. In the case of the microwave antenna for dry material, the measured level of relative permittivity equaled about 3, while the readouts of moist material provided the relative permittivity values equal to 14. These differences could be attributed to the construction of the sensors. The relative permittivity read by the non-invasive sensors is an averaged value of the relative permittivity of the measured material, but also the sensor cover that is made of polyoxymethylene having relative permittivity constant in value, equal to 3.8 [35]. In the case of the microwave antenna sensor, the signal travels free space and totally penetrates the moist material and the second marker comes from the end of the brick, rather than the end of antenna, which provides more reliable readouts of brick moisture. Moreover, it must be emphasized that the range of TDR signal penetration for the applied sensors equals about 4-5 cm, which was evaluated in the following reference [56]. The values of relative permittivity measured for dry bricks could be compared to those found in the literature, both for microwave antenna and the TDR investigations. According to Pinhasi et al. [73], the value of dry red brick real permittivity equals 3.3 and the brick wall permittivity equals 3.56. Choroszucho et al. [74] stated that the value of dry brick permittivity equals 4.4, while Kaiser et al. [75] evaluated the permittivity of red brick at the level of 4.1. A comparison of relative permittivity of moist bricks is hindered by the different water absorptivity of materials. Nevertheless, it could be stated that this value differs between 15 and 20, depending on material type [76,77], and is higher than the one achieved in this investigation. Table 2 presents the regression models achieved for all tested sensors (TDR Sensor A,B and microwave antenna) together with the coefficient of determination (R 2 ), residual error (RSE), root mean square error (RMSE), and F statistics. The assumed model of the relation between gravimetric water content and relative permittivity values based on second degree polynomial fit is satisfactory for both TDR and microwave sensors. The calibration models presented in Table 2 describe the relation between both measured values as of good quality, which is confirmed by high values of the coefficients of determination (R 2 ) that exceed the value of 0.90 in two cases; only in the case of TDR sensor B, it equals 0.87. The best values were achieved by microwave antenna sensor (nearly 0.95), but TDR A sensor is not significantly worse (R 2 of about 0.94). These high values of R 2 mean that only about of 5% of the estimated value of gravimetric water contentŵ is not properly described by the assumed model.
The values of RSE (residual standard error) vary between 1.12 and 1.76% mass . The smallest value is noticed for microwave antenna sensor, whereas the highest one is the TDR, wide sensor B. The RMSE (root mean square error) values, being a popular measure of the uncertainty, range here between 1.00 and 1.57% mass , depending on the sensor applied. The lowest and the best values are again noticed for the microwave antenna, and the highest for TDR Sensor B. Similar to the RSE coefficient, the RMSE values found in literature are mostly expressed in volumetric water content (% vol or cm 3 /cm 3 ) which hinders the comparison of these numbers. Nevertheless, it can be noticed that those values are comparable in value or sometimes lower than those found in the literature concerning electric moisture measurement techniques. The RMSE values achieved by Ju et al. [78] utilizing the Topp's [34] dependence between relative permittivity and material moisture vary between 1 and 6.6% vol . In another research, presented by Roth et al. [70], the RMSE values equaled 0.8-3.7% vol , depending on material. The calibration method proposed by Malicki's [63] enabled to achieve the RMSE values at the level of about 3% vol . Cubic polynomial model by Byun et al. [79] provided the RMSE values between 4 and 5% vol , depending on the material. Moreover, it should be emphasized that the RMSE values achieved by the tested TDR and microwave sensors are developed precisely for the examined material and particular sensor specimen. In the previously cited research, the applied models are universal and, in many cases, may not influence some characteristic data. When the achieved RMSE values are compared to those in the research presented by Udawatta et al. [64], with developed individual models for moisture evaluation by the invasive TDR probes, it can be noticed that RMSE varied in the range of 0.8-3.4% vol . In most cases, they were lower than the RMSE values established for the flat surface sensors. It is interesting that Domínguez-Niño et al. [80] conducted research in which they compared the RMSE values for the universal models, but also specific for particular sensors and materials, and achieved the RMSE values for the specific models at very low level (between 0.5 and 1% vol ) as well as between 0.9 and 1.5% vol for typical, universal models applied for moisture evaluation. Those values are comparable to the RMSE values achieved in the research presented in this article. At the end, it should be noticed that the RMSE values characterizing the methods and sensors presented in this research could be compared to the another research by the co-authors of this article (Suchorab et al.) [55] where the RMSE values ranged between 2.4 and 3.2% vol for simplified sensors construction. Figure 10 presents the results achieved from applied regression models evaluated for all sensors and the gravimetric evaluation. Linear dependences are presented in Table 3.
values for the universal models, but also specific for particular sensors and materials, and achieved the RMSE values for the specific models at very low level (between 0.5 and 1%vol) as well as between 0.9 and 1.5%vol for typical, universal models applied for moisture evaluation. Those values are comparable to the RMSE values achieved in the research presented in this article. At the end, it should be noticed that the RMSE values characterizing the methods and sensors presented in this research could be compared to the another research by the co-authors of this article (Suchorab et al.) [55] where the RMSE values ranged between 2.4 and 3.2%vol for simplified sensors construction. Figure 10 presents the results achieved from applied regression models evaluated for all sensors and the gravimetric evaluation. Linear dependences are presented in Table 3.  The dependence between the gravimetrically determined moisture (w) and TDR/microwave evaluated moisture value is clearly linear, which is visible in the diagrams presented in Figure 10. In all cases, the slope values ranged between 0.868 (the worst, for TDR Sensor B) and 0.946 (microwave antenna sensor, the best). The slope values are smaller compared to other studies by the co-authors of this paper [36,55] that were conducted using TDR A sensor specimen, but for a different material (aerated concrete), obtaining 0.994, and other non-invasive sensors which achieved the slope values between 0.988-0.993.  The dependence between the gravimetrically determined moisture (w) and TDR/microwave evaluated moisture valueŵ is clearly linear, which is visible in the diagrams presented in Figure 10. In all cases, the slope values ranged between 0.868 (the worst, for TDR Sensor B) and 0.946 (microwave antenna sensor, the best). The slope values are smaller compared to other studies by the co-authors of this paper [36,55] that were conducted using TDR A sensor specimen, but for a different material (aerated concrete), obtaining 0.994, and other non-invasive sensors which achieved the slope values between 0.988-0.993.

Uncertainty Evaluation
The detailed uncertainty analysis covers the evaluation of the combined standard uncertainty and complex uncertainty in relation to brick moisture. The results are presented graphically in Figure 11.

Uncertainty Evaluation
The detailed uncertainty analysis covers the evaluation of the combined standard uncertainty and complex uncertainty in relation to brick moisture. The results are presented graphically in Figure 11. From the diagrams presented in Figure 11, it can be noticed that both types of uncertainty vary depending on the moisture status. The lowest values of uncertainty are observed for intermediate moisture states (between 2 and 12%mass). Under nearly dry or saturated conditions, those values are the highest. These variations are typical for most meas- From the diagrams presented in Figure 11, it can be noticed that both types of uncertainty vary depending on the moisture status. The lowest values of uncertainty are observed for intermediate moisture states (between 2 and 12% mass ). Under nearly dry or saturated conditions, those values are the highest. These variations are typical for most measuring devices and here they are mainly caused by the type of the applied regression models for calibration [36]. The lowest values have been noticed for both types of sensors. In intermediate states of moisture, expanded uncertainty amounts to about 0.8-1.0% mass , while for TDR Sensor B it ranges between 1.1-1.5% mass . In dry and wet states, expanded uncertainty is higher than 1.5% mass for both microwave antenna and TDR Sensor A and even 2.8% mass for TDR Sensor B, which is of lower quality.
While comparing the achieved results of uncertainty evaluation, it should be emphasized that they are similar or better than those found in the literature, where they vary between 1 and 4% vol , depending on the material and sensing technique. According tǒ Cerný [58], TDR uncertainty for moisture evaluation of building materials equals 2.69% vol , but Ju et al. [78] evaluated the reflectometric method uncertainty at the level of 4.0% vol . In turn, according to Roth et al. [70], the uncertainty value is between 1.1 and 1.3% vol , whereas Malicki et al. [63] reported the values between 0.4-1.8% vol . Comparing to own previous research, it must be mentioned that the TDR Sensor A used in [36] reached the uncertainty level of 1.0% vol for moderate values of moisture, while for dry and nearly saturated states, it was equal to even 2.0% vol . In the case of another construction of noninvasive TDR sensors presented in [55], the uncertainty values were higher and reached about 1.5% vol in intermediate states and even more than 3% vol for wet states.
The microwave measurements in this research have been performed with the use of broadband double-ridge horn antenna, which is a kind of "laboratory standard". In order to implement this method in the real design, it seems necessary to develop a compact antenna with appropriate broad frequency bandwidth and high gain. For this purpose, it may be valuable to implement a kind of metamaterial technology, as shown in the exemplary references [81,82]. This approach would improve the performance of both microwave antennas and TDR sensors.
The values of the expanded uncertainty characterizing the microwave antenna as well as both TDR sensors are similar or lower comparing to other, invasive and noninvasive sensors. Nevertheless, it has to be mentioned that most of these devices perform according to universal calibration approach, while the measurements could be disturbed by unconsidered factors, such as material porosity or chemical composition of the solid phase. Such beneficial values of this parameter are mainly obtained by the individual calibration of each sensor that covers the influences of the construction differences and material characteristics.

Conclusions
The research on the microwave antenna and two non-invasive TDR sensors presented in this article proves that these techniques could be applied in non-invasive determination of moisture states of the porous building materials. To achieve the satisfactory level of applicability, all proposed sensors demand individual calibration for each sensor design as well as material type. This is mainly caused by the structure of porous building materials that may differ in porosity, absorptivity, or bulk density as well as the chemical compound of the solid phase. Contrary to the universal calibration models, individual calibration covers material differences and thus positively influences the value of measurement uncertainty.
Among the tested sensors, the microwave antenna sensor is characterized by the most beneficial measuring parameters, including the RMSE value for calibration formula equal to 1.00% mass and expanded measuring uncertainty in intermediate moisture states in the range of 0.8-1.0% mass . Non-invasive TDR Sensor A, presented previously in another research, has the RMSE value equal to 1.09% mass and expanded uncertainty in intermediate moisture states comparable to the microwave antenna sensor. The worst measured parameters were achieved by TDR Sensor B with RMSE equal to 1.57% mass and expanded uncertainty reaching 1.5% mass .
Nevertheless, it should be emphasized that all tested sensors provide satisfactory measuring features compared to other, even invasive sensors that are not individually calibrated for particular sensor construction or material.
All of the applied sensors are prospective for non-invasive masonry moisture evaluation, but it should be remembered that both TDR sensors are designed for surface testing and enable to detect condensation moisture in the surface layers of the masonry. In turn, microwave antenna enables penetration across the total thickness of the brick or even entire masonry thickness and enables detection of interior masonry moisture, even capillary water.