DOI QR코드

DOI QR Code

Developing a Scanner for Assessing Foliage Moisture

  • 투고 : 2019.07.30
  • 심사 : 2019.09.04
  • 발행 : 2019.09.30

초록

We intended to confirm that microwave attenuation by tree leaves is strongly linked to water content in leaves. We sampled natural broadleaves, including Japanese cinnamon, and investigated their effects on the microwave (3 to 20 GHz) frequency characteristics using a network analyzer. Experiments determined that microwave attenuation by foliage increases as a linear function of frequency per unit weight (gram). As the frequency increases, the spatial resolution increases, but the phase difference (imaginary component) increases. So we solved the dispersion of phase difference by sweeping the frequency and taking the intermediate value. Based on these experimental results, we developed a microwave scanner on 10Ghz to describe foliage moisture as a image and to enable assessments of leaf condition. Photosynthesis is the process whereby plants synthesize oxygen and sugars from carbon dioxide and water, thereby converting light energy into chemical energy. Since water is a major parameter of photosynthesis, the quantity of water accumulated inside a leaf reflects leaf health. The equipment described here and related microwave technologies will help assess the capacity of leaves to absorb atmospheric carbon dioxide.

키워드

I. OBJECTIVES

Microwave attenuation by tree foliage should have astrong link to water content in leaves. Using a network analyzer, we sampled natural broadleaves, including Japanese cinnamon, and investigated their effects on microwave (3-20 GHz) frequency characteristics. Microwave attenuation is proportional to the amount of water held within leaves. Light energy reacts with water and carbon dioxide to synthesize oxygen and sugar inside theleaf (photosynthesis). Thus, leaf water content is aparameter of the leaf’s capacity to absorb carbon dioxide. The technical developments described here will enable the visual representation of plant health.

 

II. BACKGROUND

 

2.1. Leaf structure

The leaf of a broadleaf tree generally consists of twostructures: the palisade mesophyll and the spongymesophyll. The spongy mesophyll tends to be replete with moisture and helps produce oxygen from carbon dioxideand water in response to sunlight through the chemical reaction of the leaf known as photosynthesis. To evaluatecarbon dioxide consumption, it is important to measure the amount of leaf moisture. Reducing airborne carbon dioxidehas emerged as a worldwide issue. We can predict, based on certain measurements, how effective trees will be inabsorbing airborne carbon dioxide. The extent to which carbon dioxide is converted into oxygen is determined by the average amount of moisture in the leaf and the number of daylight hours. Figure 1 gives the chemical formula forphotosynthesis.

 

E1MTCD_2019_v6n3_155_f0001.png 이미지

Fig. 1. Structure of leaf.

 

III. EXPERIMENTS

 

3.1. Basic analysis with microwaves

In the experiment, there are two different distances between the transmitter and the receiver: near-field propagation and far-field propagation.

 

A. Near-field propagation

Given our preference to deploy two transducers face t of ace at a short distance across the leaf, we will discuss thenear-field propagation of electromagnetic waves. Thequantitative definition requires use of Maxwell's equationsto calculate that electromagnetic waves are generated when an electric charge accelerates, a complex process for which a simplification is provided here. An overview is provided below.

Calculations of the magnitude of the electromagnetic field, assuming that the distance from the radiation source is r, produces a term proportional to 1/r, 1/r^2 , 1/r^3 (each term representing a radiation field), and 1/r^2: an inductionfield (a component according to Biot-Savart's law), 1/r^3: a Quasi-electrostatic field (referred to as an electric field by a dipole). In the far field (where r is large), the termproportional to 1/r^2 and 1/r^3 approaches zero morerapidly than the term proportional to 1/r, leaving only theterm of 1/r.

Calculating the boundary of the near field and far field gives the value λ/2π (where λ is the wavelength of anelectromagnetic wave). Specifically, at 2.5 GHz, a distance of 19 mm or less is close. Waves in the vicinity can be approximated by J1 of the Bessel function (left of Figure 2 and equation 1).

E1MTCD_2019_v6n3_155_f0002.png 이미지

Fig. 2. Bessel functions (left). Under scatter propagationenvironment, spatial separation of a signal is affected by the influence of similar figures of the sinc function (right).

\(k_0^2=4\pi^w/\gamma^2\\V=\text{leaf volume}\\\varepsilon = \text{average dielectric constant}\\S=\frac{k^2_0V(\varepsilon-1)}{4\pi}\cdot\Omega_nZ(\varepsilon)\cdot2.0(\frac{J_1(x)}{x})\)       (1)

 

B. Far-field propagation

The far field becomes equal to 1/r. As the termproportional to 1/r^2(a component according to Biot-Savart's law and 1/r^3(a component according to Quasi-electrostatic field due to dipoles) becomes zero, the termproportional is equal to 1/r.

The wave at the far field can be approximated by Equation 2 and by Figure 3. Since x in Equation 2 is anangle (a phase), interference is given to the adjacent space. That is to say, a received power will be non-linear due toinfluence from neighboring channels by leaves (scatterphenomenon, Figure 3).

This implies that the adjacent horns have lessinterference when angles are wider than when they arecloser than the distant signal source. In other words, a hornantenna should be near the target tree; otherwise, the interference of the adjacent waves will be relatively strong(right of Figures 2, and Figure 3, Equation 2). Qualitatively, the near field is an area where the wavefront needs to beregarded as a spherical surface, while the far field is an areawhere the wavefront may be regarded as a plane. The imped ance of the wave in the free space is 377 Ω.

\(S=\frac{k_{0}^{2} V(\varepsilon-1)}{4 \pi} \cdot \Omega_{n} \mathbf{Z}(\varepsilon) \cdot\left(\frac{\sin (x)}{x}\right)\)       (2)

 

E1MTCD_2019_v6n3_155_f0003.png 이미지

Fig. 3. Each horn antenna received interference from adjoining signals, scatter phenomenon.

 

3.2. Electromagnetic penetration

The electromagnetic penetration is infinite in a perfectly transparent substance and zero in a reflective material (forexample, metals).

Attenuation is obtained as follows:

(3)

\(\tan\theta=\text{loss current/charging current}\\\varepsilon_\Gamma\space \text{relative permittivity}\\\text{attenuation = }\frac{2\pi\sqrt{\varepsilon_\Gamma(\sqrt{1+\tan^2\theta}-1)}}{\lambda}\\\text{if} \tan\theta \text{ is} <<1\\\sqrt{1+tan^2\theta)-1}\approx \frac{\tan^2\theta}{2}\\\text{attenuation}= \frac{\pi\sqrt{\varepsilon_\Gamma}\tan\theta}{\lambda}\)       (4)

Equation 4 shows that attenuation increases in inverse proportion to wavelength and increases linearly with frequency.

 

3.3. Split cylinder

Sandwiching leaves between two transducers, as shown in Figure 4, we measured S, C, and X band powerattenuation and S parameters. This configuration is referred to as a split cylinder. Due to the relative permittivity of theleaves, the resonance frequency, Q value, and half-value band differ before and after insertion. Figure 5 illustrates these relationships.

Equation 5 gives the approximate dielectric constant of water. In our experiment, room temperature was set to about 20 degrees (dielectric constant of water at 20 degrees: 80.36).

\(\text{t:temperature}\\\varepsilon(t)=88.15-0.414\cdot t+0.131\cdot t^2\cdot 10^{-2}-0.046\cdot t^3 \cdot 10^{-4}\)       (5)

Since components other than water differ slightly depending on the type of leaf, frequency characteristics (especially the slope of the linear function) differ.

 

E1MTCD_2019_v6n3_155_f0005.png 이미지

Fig. 4. Overview of near-field experiments with split cylinders.

 

E1MTCD_2019_v6n3_155_f0004.png 이미지

Fig. 5. The resonance frequency, Q value, and half-value band (frequency band 3 dB lower than the peak) differ before and after the insertion of the leaf.

In this measurement, we keep the stem immersed in water until measurement to keep leaves from drying, whileat the same time taking steps to ensure the leaves did not contain excess water. We used only the leaf center formeasurement. Since this split cylinder pinches the leaves, itis not necessary to cut the leaves from the trunk. The leaves were irradiated with microwaves from the top face (forward direction).

To investigate changes in attenuation, we changed the number of leaves and measured frequency with 1, 2, 3, 4, 5, 10, and 15 leaves. Ten days later, we repeated thesemeasurements to determine changes (if any) in watercontent and attenuation.

 

3.4. Instruments used in basic experiments

To measure attenuation by leaves, we used a network analyzer (ADVANTEST R3767BG NETWORKANALYZER [300 kHz-8 GHz]). Since the 8-20 GHz region was not covered by this network analyzer, we alsoused a signal generator (ROHDE&SCHWARZ SMR-20), delay line (linear phase shifter), and a spectrum analyzer[ADVANTEST R3273 up to 26 GHz].

We connected two opposing transducers for each of the tests (S, C, and X bands) with microwaves directed using awaveguide. Attenuation and S parameters were measured by inserting broadleaves into the gap between the two transducers. The system for securing the split cylinder (manufactured by Tasada Works Inc.) was vertically adjustable to allow fine control of gap width.

 

3.5. Leaves

The leaves tested were taken from Ligustrum japonicum, Cinnamomum camphora, and Ligustrum iucidum. They were all taken directly from the field in the form of branches bearing leaves and measured immediately after field sampling.

 

3.6. Experimental results

The following figures summarize the experimental results:

 

E1MTCD_2019_v6n3_155_f0006.png 이미지

Fig. 6. Leaf quantity and attenuation.

Figure 6 shows attenuation increases linearly as the number of leaves increases, suggesting that microwave attenuation at 7.75 GHz increases linearly with water content.

Figure 7 shows the correlation between frequency andattenuation. Although the data in Figure 7 featuresvariations, the average value of each frequency exhibits alinear relationship. Specifically, single leaves are used to assess the fresh state and a slightly dried state. Thisindicates that attenuation per unit gram is a linear function of frequency, consistent with Equation 4. Table 1 presents the function and correlation coefficient indicating linearity for each plant species.

Although 20 GHz is considered to provide highresolution due to its short wavelength, the phase is unstable. The average of these values is consistent with the predictionformula, but, as Figure 7 indicates, it cannot be put topractical use.

 

E1MTCD_2019_v6n3_155_f0007.png 이미지

Fig. 7. Frequency and attenuation by d(dB)/d(weight) Celtissinensis.

 

Table 1. Relationship between plants species and predictionformula.

E1MTCD_2019_v6n3_155_t0001.png 이미지

 

IV. DEVELOPMENT

 

4.1. The scanner hardware

Figure 8 is a block diagram of the prototyped scanner. This device features 40 superheterodyne receivers at 10.5GHz to detect non-modulated (continuous carrier withsweeping the frequency 300MHz) signals from transmitterslocated 5-30 meters distant. Since 40 units share two localoscillators, they are all in phase. Here, without the phasedifference, the attenuation of the amplitude is obtained by RF detectors with a log amplifier. Figure 9 gives the circuit diagram of the main board. As a reference before an experiment, a signal is received in free space withoutobstacles in order to set the signal level at zero. In parallel, references with 40 logarithmic detectors are performed with a spectrum analyzer. Each error is managed by the CPU as a quick lookup table.

Figure 10 illustrates the relationship between detectorinput levels and output voltage. As this figure shows, therange from -55 to -5 dBm gives a strong linear dynamicrange of 50 dB. We adjusted the transmitter output level and used this linear part.

The elements of the 8-channel 12-bit A/D converter areconnected to the CPU by I2C at five elements (8 x 5 = 40 channels) and integrated for 3 seconds at one s weep (Bw:300 MHz) to obtain maximum and minimum values. The A/D sampling frequency was 1,000/sec/ch. The average value of the maximum and minimum will beattenuation scalar value (j part = 0; details to be explained in item 4.2).

Including the time required for the physical movement of the horn and the integration time of 3 seconds, the timerequired to render a single raster is 5 seconds. It takes 250 seconds to scan one sheet (40 x 50 pixels).

 

E1MTCD_2019_v6n3_155_f0008.png 이미지

Fig. 8. Block diagram of main receivers.

 

E1MTCD_2019_v6n3_155_f0009.png 이미지

Fig. 9. Circuit diagram for 2nd mixer, filter, IF amp, and detector.

 

E1MTCD_2019_v6n3_155_f0014.png 이미지

Fig. 10. Relationship between input level to the detector and output voltage. This figure shows strong linearity in dynamicrange of 50 dB from -55 to -5 dBm.

The dimensions of the scanner are 100 cm x 101 cm; the back aluminum plate size is 100 cm x 120 cm, and thesensor can be up to 40 horizontally and up to 100 in thevertical direction (moving in 1 cm steps). The scanner has a standard image quality of 40 x 50 steps and a fine 40 x100 steps of matrix (Figure 11, 12).

Using a horn antenna provides a gain of 10 dBi (Figure 13). The sensor must be placed as close as possible to the object to obtain the necessary resolution. Using a hornantenna with higher gain suppresses interference fromadjacent channels, however, the question arises: Are the beams parallel. Since such physical issues can arise, a gainof 10 dBi may be appropriate at the production stage.

Another solution is to use a higher frequency to sharpenthe beam. Here, the dilemma is that a broad dynamic range is needed due to the significant attenuation by the leaves. Based on these conditions, we selected 10.5 GHz.

 

E1MTCD_2019_v6n3_155_f0015.png 이미지

Fig. 11. 40 array horns

 

E1MTCD_2019_v6n3_155_f0016.png 이미지

Fig. 12. Spatial relationship of the various parts (40 array horns and LNAs, stepping motor, screw-gear).

 

E1MTCD_2019_v6n3_155_f0017.png 이미지

Fig. 13. CAD shows horn antennas and LNAs which arranged to 40 arrays.

 

E1MTCD_2019_v6n3_155_f0010.png 이미지

Fig. 14. Approximation of scalar value of receiving powertravelling through free space. The upper part is the Smith chart, the middle part is the phase (the Y axis represents the imaginary component and X axis frequency), the lower part is the scalarvalue of received power, while X axis is frequency. The red marks are the phase = j0.

 

4.2. Approximation for implementation

There are several methods for removing the phase part of a signal traveling in free space to assess the power of thereceiving signal. It is sufficient to read the signal strength, when the phase part becomes zero. In the Smith chart, ifimped ance were changed concentrically around Z = 50 + j0normalized, it would be an intermediate value between the maximum value and the minimum value. In fact, since the image is not rotated concentrically (50 + j0) as shown in Figure 14, a certain degree of error can be approximated in this method. The gradation of the image is a comparison of relative values; if all pixels have the same bias, they cancelout and can be disregarded.

The phase is shifted by inserting a delay line or slowly drifting the frequency of the transmitter. Since the sources are only about 30 m apart obtaining local oscillation frequency with coaxial cable (sweep frequency band width 300 MHz), it is possible to modulate a drifting frequency to the second OSC of the receiver.

 

4.3. Circuit design

Figure 15 shows free space propagation loss. Table 2 shows the circuit design for a distance of 30 m. The RF detection on the receiver side has a dynamic range about 50 dB, but transmission power must be controlled to avoidsaturation and declines in noise level.

 

4.4. Software

In the software, the mechanical control, the value of 40 received power from the A/D converters, and these data arerecorded for each raster. Finally, one set of measurement data is saved to an Excel csv file. Table 3 shows the image processing required to display one picture. These functions are provided as reference materials at the end of the paper.

 

4.5. How to use this scanner

The aluminum plate on the back of the scanner is large (1.2 m x 1 m) and heavy and not readily lifted. As shown in Figure 16, using a lifter, data is acquired on multiple planes (pages). The control of the lister can be controlled in 1 c mincrements.

 

4.6. Scanning image

Shown to the right is a picture of the actual tree (Figure 17 left) and a picture drawn for each raster based on data obtained from attenuation through the leaves. Certainly, there is a multi-scatter equivalent to the Loo distribution, but integrated over time, the average value of the phase becomes zero, making it possible to visualize the amount ofattenuation. However, the sharpness of the image does not correspond to the optical level, as interference fromadjacent channels remains.

The amount of water in the leaves of trees can bequantified in this way. How much water do the leaves of the trees take up?

 

E1MTCD_2019_v6n3_155_f0011.png 이미지

Fig. 15. Free space propagation loss

 

Table 2. Circuit design of distance 30 M

E1MTCD_2019_v6n3_155_t0002.png 이미지

 

Table 3. Image processing functions

E1MTCD_2019_v6n3_155_f0012.png 이미지

 

E1MTCD_2019_v6n3_155_t0003.png 이미지

Fig. 16. Using the foliage scanner.

 

E1MTCD_2019_v6n3_155_f0018.png 이미지

Fig. 17. Result of field test by the foliage scanner, Zelkova.

 

V. DISCUSSION

 

5.1. Data analysis

As the number of leaves increases, total attenuationincreases while attenuation per leaf decreases. We found nosignificant difference in attenuation per leaf for the different tree species.

This implies attenuation by leaves is not proportional tounit attenuation per leaf or number of leaves and thatattenuation per leaf gradually declines as the number ofleaves increases. This is probably because the surfaceresistance differs from the internal resistance in leaves. This difference may affect the S parameters as well.

As the leaves dry out and leaf weight declines over time, microwave attenuation also declines. This phenomenon was more pronounced at higher frequencies and indicatesmicrowave attenuation is significantly dependent on watercontent. As the data indicates, different frequencies aredifferently affected by leaves: shorter waves are likely to bereflected at the surface, while longer waves penetrate leavesto some extent.

Based on this data, we developed a foliage scanner for the X-band to assess the status of leaves (Figure 5, 6, 7 ). With a very weak CW carrier from the transmitter in the X-band, 40 array antennas with a receiver can scan and analyze foliage attenuation. We believe this image issomething like a chest X-ray image of a tree capable of observing water density in foliage.

 

5.2. Scientific predictions of carbon dioxide absorption

Leaves perform photosynthesis to convert light energy into chemical energy, which is then stored in carbohydratemolecules, such as sugars, which are synthesized from the carbon dioxide in the air and the water in the leaves (Figure 1). Annual carbon dioxide absorption (trunk circumferenceranging from 15 to 30 cm per tree ) is as follows:

1. Deciduous broad-leaved trees and pines: 100 kg

2. Evergreen broad-leaved tree, needle-leaf tree (other than pine): 66 kg

Leaves containing little water absorb significantly lesscarbon dioxide. That is, the amount of water contained in leaves is a parameter we can use to predict how muchairborne carbon dioxide will be absorbed. Our scanner usesmicrowaves to assess the amount of water held in the leaves, resulting in a more precise reading of carbon dioxideabsorption than the above-mentioned simple method.

Additionally, this foliage scanner can predict the growth of premium seedlings based on the amount of water in leaves or the quality of fruit for premium mangos. Foradvanced IoT-based agriculture, we believe this scannerwill serve as an effective sensor in water managementapplications.

 

5.3. Future applications for search and rescue over foliage

C-band (3.875 GHz) and X-band (7.75 GHz) wavelengths are 7.7 cm and 3.9 cm, respectively. In general, radiowaves do not pass through objects; rather, they reflectoff if the object is deeper than half the wavelength. Meanwhile, radiowaves penetrate objects thinner than 1/4 of the wavelength. If the object is approximately 1/2 the wavelength, both reflection and penetration occur. Thus, microwaves impinge upon trees, S-band waves pass through the leaves, then reflect off the trunks and ground;X-band waves reflect off leaf surfaces; and C-band waves reflect off both leaves and stems and trunks and the ground. Utilizing such property differences between the bands, we may apply SAR to various research efforts (Figure 18): We can collect geographic and geological data used to analyzethe distribution of vegetation and the classification of tropical and boreal forests using the S-band, whilevegetation pattern data on farmland and grass fields can becollected using the C- and X-band microwaves, taking advantage of differences in reflection intensity between leaves and stems. Combining UWB radar technology and the C and X bands may make it possible to develop ahelicopter-borne search and rescue radar system capable offinding humans lost in forests.

 

Fig. 18. UWB radar for location people lost in the woods.

 

VI. CONCLUSION

Microwave attenuation as a scalar quantity by trees foliage matches physical logic and measurement data andincreases as a linear function of frequency and number ofleaves. As the frequency increases, the spatial resolutionincreases, but the phase difference (imaginary component) increases. We solved the dispersion of phase difference bysweeping the frequency and taking the intermediate value.

We developed a microwave foliage scanner based on these basic technology and actual data. This technology iscapable of estimating the water content of leaves, predicting the amount of carbon dioxide absorbed, and determining plant health.

 

Acknowledgements

This research was supported by the Telecommunications Advancement Organization (TAO, No. 401).

For their timely assistance, we would like to thank Prof. Kiyoshi Kurokawa of the National Graduate Institute for Policy Studies, Prof. Toshihiko Kitano, Dr. Nadia El BoraiYamamura, Ms. Yuko Namba, Mr. Toru Yuhki, Mr. ToshioFujimoto, Mr. Koredianto Usman, Mr. Agus Subekti, Ms. Noriko Numata, Ms. Kimiko Kobayashi, and Ms. MiyoshiTanaka at Nakajima Laboratory for analyzing voluminous field data. JSD (Japan System Design Ltd. Hiroshima City) provided guidance on the use of certain technologies andsof tware related to the measurement devices.

참고문헌

  1. B. Hobbs, N. Stacy, "Estimating X-band synthetic aperture radar detection of objects obscured by foliage using the DSTO Ingara airborne imaging radar" IGARSS 2001. Scanning the Present and Resolving the Future. Proceedings. IEEE 2001 International Geoscience and Remote Sensing Symposium (Cat. No.01CH37217), July 2001
  2. Y. Huang, L. Ferro-Famil, A. Reigber,"Under-Foliage Object Imaging Using SAR Tomography and Polarimetric Spectral Estimators", IEEE Transactions on Geoscience and Remote Sensing, vol.50, no. 6, pp.2213-2225. https://doi.org/10.1109/TGRS.2011.2171494
  3. I. Nakajima, K. Tsuda, H. Juzoji, M. Ta, "A Nationwide Study on Optical Analysis for Expecting HEOs to Support Ambulances," Journal of Multimedia Information System, vol. 6, no. 2, pp.107-118, Jun 2019. https://doi.org/10.33851/JMIS.2019.6.2.107
  4. G. Sun, K. J. Ranson, "A three-dimensional radar backscatter model of forest canopies," IEEE Transaction on Geoscience and Remote Sensing, vol. 33, no. 2, pp. 372-382, 1995. https://doi.org/10.1109/TGRS.1995.8746018
  5. Y.P.Kalra, D.G.Maynard, F.G. Radford, "Microwave digestion of tree foliage for multi-element analysis," www.cem.de/documents/pdf/publikation/digestion/RD024.PDF
  6. M. Ghoraishi, J.Takada, C. Phakasoum, "Directional Analysis of the Radio Wave Propagation through Foliage," www.ap.ide.titech.ac.jp/.../Archive/COST2100_TD(10)10095(1002Mir).pdf
  7. P. Raturi, V. Gupta, "Effect of Foliage on Out door Propagation,' Int. J. of Scientific & Engineering Research, vol.4, no.3, pp.1-3, March 2913.
  8. M. Elshayeh, S. Betti,"Study of Attenuation in Vegetation Media and Prediction Model at Microwave Frequencies," Science Journal of Circutes, System and Signal Processing, vol. 7, no.1, pp.1-7, 2018. https://doi.org/10.11648/j.cssp.20180701.11
  9. Y. Meng, Y. H. Lee,"Investigations of foliage effect on modern wireless communication systems :A review," Progress in Electromagnetics Researchvol.105, pp.313-332, January 2010. https://doi.org/10.2528/PIER10042605
  10. M. Karaliopoulos, F. Pavlidou, "Modelling the land mobile satellite channel: A review," IEE Electron. Commun. Eng. J., vol. 11, no. 5, 235-248, 1999. https://doi.org/10.1049/ecej:19990506
  11. Akyildiz, I. F., W. Su, Y. Sankarasubramaniam, and E. Cayirci, "Wireless sensor networks: A survey," Computer Networks, vol. 38, no. 4, pp.393-422, 2002. https://doi.org/10.1016/S1389-1286(01)00302-4
  12. A. Paulraj,, D. Gore, R. Nabar, H. Bolcskei, "An overview of MIMO communications $\mid$ A key to gigabit wireless," IEEE Proc., vol. 92, no. 2, pp.198-218, 2004. https://doi.org/10.1109/JPROC.2003.821915
  13. A. Molisch, "Ultra wideband propagation channelstheory, measurement, and modeling," IEEE Trans. Veh. Technol., vol. 54, no. 5, pp.1528-1545, 2005. https://doi.org/10.1109/TVT.2005.856194
  14. S. Karapantazis, F. Pavlidou, "Broadband communications via high-altitude platforms: A survey," IEEE Commun. Surveys & Tutorials, vol. 7, no. 1, pp. 2-31, 2005. https://doi.org/10.1109/COMST.2005.1423332
  15. Y. Lee, Y. Meng, O. Tay, "Characterization of Wi-Fi antenna system on a remote controlled helicopter," Proc. 2008 Asia Pacific Symp. Electromagn. Compat. & 19th Int. Zurich Symp. Electromagn. Compat., pp.319-322, May, 2008.
  16. M. Weissberger, "An initial critical summary of models for predicting the attenuation of radio waves by foliage," ECAC-TR, pp.81-101, Electromagn. Compat. Analysis Center, Annapolis, 1981.
  17. M. Al-Nuaimi, R. Stephens, "Measurements and prediction model optimization for signal attenuation in vegetation media at centimetre wave frequencies," IEE Proc. Microw. Antennas Propag., vol. 145, no. 3, pp.201-206, 1998. https://doi.org/10.1049/ip-map:19981883
  18. A. Seville, K. Craig, "Semi-empirical model for millimetre-wave vegetation attenuation rates," Electron. Lett., vol. 31, no. 17, pp.1507-1508, 1995. https://doi.org/10.1049/el:19951000
  19. A. Seville, A., "Vegetation attenuation: Modeling and measurements at millimetric frequencies," Proc. 10th IEE Int. Conf. Antennas Propag, 2.5-2.8, Edinburgh, Scotland, Apr. 1997.
  20. H. M.Rahim, C.Y. Leow, T. A. Rahman, A.Arsad, M. A. Malek, "Foliage attenuation measurement at millimeter wave frequencies in tropical vegetation", IEEE 13th Malaysia International Conference on Communications (MICC), 2017. DOI: 10.1109/MICC.2017.8311766
  21. M. Shaik. A. Kabanni, N. Nazeema," Millimeter wave propagation measurements in forest for 5G Wireless sensor communications",2016 16th Mediterranean Microwave Symposium (MMS), DOI: 10.1109/MMS.2016.7803785
  22. C. Umit Bas," Rui Wang ; Seun Sangodoyin ; Sooyoung Hur ; Kuyeon Whang ; Jeongho Park 28 GHz Foliage Propagation Channel Measurements, 2018 IEEE Global Communications Conference (GLOBECOM), DOI: 10.1109/GLOCOM.2018.8647674
  23. I. H. Rodriguez, R. P. Abreu, "24 GHz cmwave radio propagation through vegetation: Suburban tree clutter attenuation", 10th European Conference on Antennas and Propagation (EuCAP), DOI:10.1109/EuCAP.2016.7481471
  24. M. Elshayeb, S. Betti,"Study of Attenuation in Vegetation Media and Prediction Model at Microwave Frequencies", Science Journal of Circuits, Systems and Signal Processing, vol. 7, no. 1, pp. 1-7, 2018. https://doi.org/10.11648/j.cssp.20180701.11
  25. Q. Wang, X. Zhao, S. Li, M. Wang,S. Sun, W. Hong, "Attenuation by a Human Body and Trees as well as Material Penetration Loss in 26 and 39 GHz Millimeter Wave Bands", International Journal of Antennas and Propagation vol. 2017, Article ID 2961090, 8 pages https://doi.org/10.1155/2017/2961090
  26. CCIR, Influences of terrain irregularities and vegetation on troposphere propagation," CCIR Report, 235-236, Geneva, 1986.
  27. COST235, "Radio propagation effects on nextgeneration fixed-service terrestrial telecommunication systems," Final Report, Luxembourg, 1996.
  28. Recommendation ITU-R P.833-9,"Attenuation in vegetation", https://www.itu.int/dms_pubrec/itur/rec/p/R-REC-P.833-9-201609-I!!PDF-E.pd, September 2016.
  29. G. Carrion, M. Huerta, B. Barzallo, "Internet of Things (IoT) Applied to an Urban Garden," IEEE 6th International Conference on Future Internet of Things and Cloud, 2018.
  30. T. J. Lee, O. Lee, J. Kim, L. Shterengas,"CO2 sensor with data logger system", IEEE Long Island Systems, Applications and Technology Conference (LISAT), 2012.