1. Introduction
The development of intelligent features for road vehicles has been on the rise in recent years, with a focus on fully autonomous driving. There are five levels of autonomy as defined by the Society of Automotive Engineers (SAE). Level-0 offers no assistance, Level-1 offers adaptive features, Level-2 provides partial automation, Level-3 has conditional automation, Level-4 does not require driving intervention in preset environments, and Level-5 offers full automation in all conditions [
1]. Common Advanced Driver Assistance System (ADAS) sensors include cameras, Light Detection and Ranging (LiDARs), Radio Detection and Ranging (RADARs), and Sound Navigation and Ranging (SONARs) [
2]. The sensors are responsible for perceiving environmental data and communicating with ADAS when deploying automated functions, such as emergency braking, adaptive cruise control, hands-free steering, etc.
A concern regarding autonomous features is the uncertainty of sensor performance degradation when driving in adverse weather conditions, particularly rain, as it is the most common precipitation form globally. Optical sensors like cameras and LiDARs are more susceptible to impairments in the rain due to the use of shorter wavelengths (nm scale), which increase sensitivity to interference. Longer-wavelength (mid and high mm scale) sensors such as RADAR and SONAR are less prone to performance degradation as they have lower resolutions and their wavelengths are often larger than the raindrop scale (low mm scale) [
3]. On the other hand, LiDAR is a less established technology than cameras, with multiple aspects still in development, especially for automotive applications, such as electronic and photonic components, signal processing, and packaging. Therefore, this paper focuses on investigating LiDAR performance in rain.
Automotive LiDARs typically utilize the time-of-flight principle to determine the range of objects based on simple elastic scattering phenomena without wavelength changes [
4]. LiDAR emits laser pulses toward a target object; the detector then calculates the time it takes to receive a backscattered signal in order to identify the distance of the target from the incident source. A LiDAR sends out short-duration wave pulses with a known power, and the return flux is converted into an electric voltage using photodiodes or photomultipliers. The signal energy can be calculated with consideration of efficiency loss during the laser travel, as described in Equation (1) below.
E,
σ,
A,
R, and
η represent energy, the cross-section of the target that is illuminated, area, range, and efficiency, respectively.
Automotive applications employ near-infrared lasers with a wavelength of 905 nm or 1550 nm, which are suitable for short-ranging. The energy of a 905 nm LiDAR is lower than that of a 1550 nm device for eye safety [
5]. Lasers of 1550 nm wavelength may be sent out for shorter durations and by less affected by background noise; however, 1550 nm wavelengths are more prone to atmospheric absorption by gas molecules [
6]. The current state-of-the-art types and sensing schemes of LiDARs are reviewed and discussed in [
7] for the construction and operating mechanisms.
From a practical point of view, it is desirable to protect the ADAS sensors from harsh driving environments that may damage the sensor lenses due to soiling (surface contamination [
8]). Thus, it has been proposed that protective covers may be used in front of the sensors, with various coatings applied to achieve properties such as water repellence, anti-abrasion, and anti-reflection [
9].
Figure 1 shows the front cover, with integrated sensor modules behind.
Multiple studies suggested that LiDAR performance degrades in rain because raindrops can absorb laser energy or alter the paths of laser beams. The attenuation of light due to precipitation has been extensively studied concerning the extinction coefficients [
5,
10,
11,
12,
13]; the experimental condition is demonstrated in
Figure 2a, for which the adherence of droplets to the LiDAR surface is not considered. The attenuation effect on LiDAR return signal power
Preturned is shown in Equation (2), where
Z is the distance of the object from the LiDAR. The extinction coefficient
ζ is a function of natural rain intensity, drop size distribution, and the scattering effect caused by the droplets assuming spherical shapes. Also, assuming the only variable is rainfall rate, then the higher the rain intensity, the lower the return power.
Although the attenuation model provides an estimation of the LiDAR performance with respect to raindrop size distribution and intensity, there are other crucial factors to consider when driving in rain. Adherent raindrops are much closer to the LiDAR surface, causing obstruction and the deflection of signals [
14]; this scenario is demonstrated in
Figure 2b. The small apertures of the micro-electromechanical systems (MEMS) mirror, only a few millimeters in size, restrict the size of the scanning laser beam, which is one of the major factors obstructing LiDAR vision when raindrops of similar size to the aperture adhere to the outer surface of the LiDAR sensor [
15]. The influence of aperture size is also discussed in [
16,
17]; generally, a larger aperture that can scan rapidly at a higher frequency is desired.
LiDAR performance degradation has also been studied for outer covers to prevent the addition of mechanical damage and surface contamination near the LiDAR aperture [
18,
19]. These studies showed that scratches on the cover affect the detection accuracy for a known position of the target. In contrast, extremely tiny droplets from dew can cause complete blindness and a reduced the number of points on the target when there are larger droplets present. Another recent study also reported missing measurements of LiDAR signals when exposed to rain [
20]. These studies provided insights into the modes of detection faults based on several possible realistic scenarios, but did not investigate the causes of LiDAR performance degradation in depth. Understanding the problem fundamentally has a higher potential to allow the development of preventive measures, such as appropriate cover material and LiDAR optical component designs.
With the evolution of ADAS sensors implementations, surface coatings are no longer only considered regarding overall body panel protection, but also the transmittance quality of sensor signals [
21]. The size ratio between the contacting adherent raindrop and the aperture is dependent on surface material properties, which subsequently affect the raindrop, impacting characteristics and dynamics at the surface such as adhesion, motion, contacting area, and shape. Surface wettability is classified as hydrophilic, hydrophobic, and superhydrophobic when the static water contact angles (WCAs) are <90°, between 90–150°, and >150°, respectively. The resultant WCA, occurring due to surface roughness, is summarized in [
22] with a review of electrodeposition coatings. The method used to evaluate surface wetting and droplet adhesion forces is summarized in [
23] using a microbalance. Droplet impact dynamics are affected by surface wettability, resulting in different modes of motion, such as sliding, rolling, bouncing, splashing, and spreading [
24,
25,
26]. Recently, there have been several works reporting the tuning of wettability gradients [
27] and the patterning of hydrophobic/hydrophilic (biphilic) properties [
28] to induce droplet movements; these could be interesting research directions in coatings for ADAS sensor applications and produce strategies with which to passively mitigate raindrops by facilitating water drainage. The droplet dynamics phenomena are expected to become more significant in driving scenarios with vehicle speed compared to being stationary.
Our previous works show the surface material dependence during exposure to controlled and realistic simulated rain, as perceived by a moving vehicle [
29,
30], for which the use of different covers and coatings affects the optical sensor visibility of the detection target at a given condition. Sample images collected in simulated realistic rain via perception by a driving vehicle are shown in
Figure 3 to demonstrate the significance of cover material in LiDAR performance; the controlled rain testing method, for which we used wind tunnels at the Automotive Centre of Excellence (ACE) at Ontario Tech University, Canada, is outlined in detail in [
29,
30].
Since LiDAR is an optical sensor, it is hypothesized that adherent raindrops of different sizes and shapes act as localized lenses for the LiDAR within its field of view (FOV), influencing optical paths. Some studies focus on the ball lens to achieve a beam coupling effect on optical paths [
31,
32], equivalent to the presence of an almost-spherical droplet on a superhydrophobic surface. Meanwhile, Ref. [
16] discussed the ray-tracing model for an adherent hemispherical droplet, where the laser beam passes through a hydrophobic solid layer before reaching the droplet. They demonstrated that the ray deflection angle becomes more severe as the incident position becomes closer to the droplet curvature boundary. The droplet size factor is also investigated in their simulation and the results show that there exists an optimal ratio of droplet size to laser beam diameter for retaining a higher percentage of return laser power. A limited number of conditions were investigated in these studies. Therefore, the findings are not representative of a more comprehensive selection of cover materials but they provide insights for this study.
LiDAR performance degradation when driving in the rain is not very well understood in the field of automotive applications; therefore, it poses safety hazards when using autonomous features during rainy conditions. Currently, there are recommended requirements for automotive LiDAR systems [
33] in terms of detection specifications, but there is no standard for the external materials used for automotive LiDAR applications, hindering the development of autonomous vehicles and the deployment of LiDAR in exterior applications. One of the main reasons for these research gaps is likely due to the lack of adherent droplet studies (droplets on cover), which are strongly related to the materials and optical properties of the surface. For instance, LiDAR performance for automotive applications, when driving, may not always follow the performance presented in typical studies in the open literature based on the return power estimation with respect to rain intensity resulting from attenuations due to droplets in the atmosphere, as Equation (2) does not incorporate factors such as driving speed, droplet size, and droplet dynamics arising from cover materials and vehicle aerodynamics. This paper is therefore motivated by the need to understand what causes LiDAR performance degradation in rain when in contact with adherent droplets. We hope that this will serve as a guideline for coating selection when producing automotive LiDAR covers that meet the application requirements of transmittance and weatherability.
The objective of the paper is to address the above-mentioned gaps by providing reasonings for LiDAR performance degradation by conducting a fundamental investigation of isolated droplet tests and discussing the results from materials and optical perspectives using four different classes of cover materials—hydrophilic, almost-hydrophobic, hydrophobic, and superhydrophobic. The focus is on the effects of frontal covers on LiDAR performance when droplets are present.
The contributions of the paper are as follows:
Comprehensive fundamental evaluation methodology, including optical and material aspects, for analyzing the suitability of a material to be used as a LiDAR cover;
Wide range of materials are studied, spanning the full spectrum of wettability;
Phenomenological models to explain the interactions between laser optics, droplet characteristics, and surface material properties;
Baseline reference for modeling LiDAR performance in rain with respect to cover material properties;
Criteria for enabling different types of materials to maintain LiDAR vision in rain;
Research directions for LiDAR signal-enhancing strategies using material and optical approaches;
Insights into the areas of soiling behavior and sensor responses for virtual ADAS sensors and AV simulation.
3. Results
As stated earlier, this paper aims to provide some insights into LiDAR performance degradation from material and optical perspectives by correlating characterized properties, varying droplet morphology, and tracing laser beams. At the end of the paper, phenomenological models are proposed for the four classes of cover materials—hydrophilic, almost-hydrophobic, hydrophobic, and superhydrophobic. In this section, the results are organized into four sub-sections: cover surface material properties, cover optical properties, LiDAR performance with the presence of droplets, and fundamental optical characteristics.
3.1. Cover Material Properties
The cover material’s properties are comprehensively characterized via measurements at 10 different spots on the cover, assessing cover thickness, surface roughness, static WCA, and the ratio of droplet thickness to contact diameter (t/D). The visuals of these evaluations are shown in
Figure 5. These properties are hypothesized to affect LiDAR performance; the average means and standard deviations from the 10 points of measurement are reported in
Table 1.
Table 1 and
Figure 5 suggest that the coatings are even, with small standard deviations in the thickness and roughness measured over 10 different spots. The superhydrophobic cover has a low-surface-energy thin film on top of the hard coating; hence, it is thicker by about 0.3 mm compared to the other covers. The hydrophobic coating is the roughest, which likely contributed to making it approximately 0.1 mm extra thick compared to the hydrophilic and the almost-hydrophobic covers, considering they underwent the same coating process.
Fewer peaks are observed for the hydrophilic cover, which is also reflected in the arithmetic mean roughness that it is the smoothest among the set of covers. Rougher textures with tighter gaps between the peaks are seen as the WCA increases across the set of four covers. However, with reference to the Wenzel model [
40], the measured WCAs suggest that these four as-received cover coatings all have different chemical properties as they do not result in the same Young angles after applying their respective roughness factors. This is a crucial piece of information for understanding optical properties, as transmittance may be affected by material compositions in addition to thickness and surface roughness. Material compositions are not characterized in this study due to commercial restrictions.
WCAs describe surface wettability by classifying the overall droplet behaviors, such as droplet shape and spreading energy. To better understand the LiDAR performance from the optical perspective, wettability is quantified using a ratio of thickness to contact diameter (t/D) in addition to static WCA. The main reason is due to the hypothesis that droplets are small, localized lenses that change the optical path. Therefore, the curvature and contact profiles are key parameters dictating the optical paths with reference to Fresnel’s equations [
39], explaining transmission, reflection, and refraction.
3.2. Cover Optical Properties
Cover optical properties are characterized by transmittance (%T) and reflectance (%R) over different angles of incidence and by measuring at three different spots on the cover, labeled Samples 1, 2, and 3 in
Figure 6. As mentioned before, the cover is made of polycarbonate, with coatings applied to the external surface when used with a LiDAR unit. The laser path sequence is as follows: it leaves the laser source, traveling through the air; then, it meets the polycarbonate cover with coating on the outer side; and then it travels through the air again toward the detector.
The amount of incident power reflected changes depending on the polarization of light, whether it be unpolarized, s-polarized, or p-polarized. Using Fresnel’s equations, for p- and s-polarized lights, the total transmission decreases while reflectance increases as the angle of incidence increases between a light source and a medium. In this paper, p-polarized light is used; there is an anomaly that is presently known as the Brewsters effect, occurring specifically at an angle equal to the arctan of the refractive index of the second material (polycarbonate, n = 1.586) over the first material (air, n = 1). Ideally, there should be no reflection; however, in real applications, this leads to a higher transmission and lower reflection in some of the covers at around a 57.7° angle of incidence for a polycarbonate material.
The refractive index changes slightly with an added thin layer of coating, which causes differences in transmission and reflection for the four covers. The same idea can be applied for anti-reflection purposes by creating interference; the reduction in reflection will result in an increase in transmission through the material. In contrast, surface roughness may cause deviations in measurements as light is diffused away from the original position, which lowers the measured power. As mentioned in the description of the cover material properties above, the transmittance and reflectance are affected by both surface roughness and the material composition. Although the covers cannot be directly compared, the optical results presented provide a reference for functional LiDAR covers and the recommended placement of the cover with respect to the LiDAR lens to maximize transmittance and minimize reflectance in order to ensure good LiDAR vision.
3.3. LiDAR Performance with the Presence of Droplets
The LiDAR visibility attained when using a cover is compared to the baseline without a cover. Results are reported in
Table 2, and visibility was measured to be 87.3%, 86.6%, 89.1%, and 98.8% with hydrophilic, almost-hydrophobic, hydrophobic, and superhydrophobic covers, respectively. Using a cover lowers the LiDAR visibility slightly, which aligns well with the optical property characterization. It is worth noting that laser beams emitted by the LiDAR diverge in different directions to obtain a wide FOV; thus, they are incident to the cover at different angles. As a result, the dry visibility with a flat cover parallel to the LiDAR lens is expected to differ from the optical properties characterized by a single-point laser. However, the visibility should lie in the range of transmittance measured.
The influence of adherent droplets on LiDAR vision is investigated with controlled single-droplet tests with different droplet volumes. The presence of droplets causes missing points, which is referred to as signal blockage in
Figure 7. The trend is non-linear; this could be because of several uncontrolled variables, including point cloud jittering, droplet molecular motion and spreading, droplet position, and the laser beams’ angle of incidence within the masked FOV region for accommodating different droplet volumes. In general, however, the larger the droplet, the larger the blockage and the lower the visibility.
The rate of increase in blockage size with respect to droplet size is faster with smaller droplets on hydrophilic, almost-hydrophobic, and hydrophobic covers. This may be caused by greater scattering, resulting in point clouds being less dense as partial beams are deflected. At smaller droplet sizes (≤2.5 μL), the blockage on the almost-hydrophobic cover is larger than that of the hydrophobic cover, likely due to the wider contact diameter from the spreading energy on the almost-hydrophobic cover and having a hemispherical shape. When the droplet volume increases (≥5 μL), the almost-hydrophobic cover induces more spreading and lowers the height of the droplet, which helps to retain more visibility than a hydrophobic cover.
From the selected sample images of the blockage behavior in
Figure 7, it is observed that reflectivity (signal strength) is affected, as demonstrated by the change in color of the point clouds, with red having lower and green having higher reflectivity. When comparing the mean reflectivity in dry condition with the 30 μL droplet condition at points around the main blockage, a reduction in reflectivity is reported. This is recorder in
Table 3, registering at 11%, 9%, 5%, and 8% for hydrophilic, almost-hydrophobic, hydrophobic, and superhydrophobic covers, respectively. The hydrophilic cover is most where the thinner region of the droplet is spread and resembles a water film, causing refraction and reduction in transmitted power. With less spreading, the almost-hydrophobic cover is 2% less affected than the hydrophilic cover. The hydrophobic cover generally causes missing point clouds without much effect on reflectivity changes; this is likely due to a consistent hemispherical shape regardless of droplet weight, such that either beams are being trapped or they are strongly deflected. The superhydrophobic cover case only performs well at smaller droplet volumes, and there are more partial droplet contacts due to droplet weight with larger volume, which begins to have a larger effect on the laser paths.
3.4. Fundamental Optical Studies
To understand the phenomena of missing point clouds and the reduction in reflectivity due to the presence of a droplet on the cover, a droplet is dispensed physically, modeled on the cover, and allowed to slide down across the laser beam. It is found that the presence of droplets causes an obstruction to the laser signal as transmittance drops to almost zero for most cases.
Figure 8a,c shows the duration of droplet influence on optical transmittance for hydrophilic and hydrophobic covers, whereas
Figure 8b,d shows the effects of droplet position and curvature on optical transmittance for almost-hydrophobic and superhydrophobic covers without considering the sliding speed. A teardrop-shaped droplet slides down slower on a hydrophilic cover than to a hemispherical droplet on a hydrophobic cover, evidenced by the wider trough in the transmittance curve for the hydrophilic cover. This phenomenon aligns well with expectations as the hydrophobic surface is less wetting and can facilitate droplet removal faster. Meanwhile, an arbitrarily larger droplet (1.0 mm) on the almost-hydrophobic cover has a wider impact on transmittance than a smaller droplet (0.1 mm) on the superhydrophobic cover. The impact is quite symmetrical for a rounder droplet on the superhydrophobic cover. Some transmission is still permitted when the laser aligns with the center of the droplet, but its signal strength is weak. This is probably why the LiDAR point cloud shows the projected shadow of the droplet, with no point cloud seen at the center when this LiDAR unit has a 10% reflectivity threshold.
Laser beams are traced in the simulation model to visualize the weakening of signal power that results in a decrease in optical transmittance when a droplet is in the laser’s path.
Figure 9 shows the laser paths through a hydrophobic cover towards the detector in dry conditions and when a droplet is present at two different positions with respect to the center of the emitted laser beam. In a dry condition or one with no droplet (
Figure 9a), most of the emitted laser power is captured by the detector on the other side, recorded to be 91% of the total power when having a 3 mm polycarbonate cover. However, when a 1 mm droplet is introduced (
Figure 9b), the majority of the beam is deflected and does not reach the detector. Thus, the detected power is only 10% of the emitted power. Laser paths are observed to be sensitive to droplet position, which changes the angles of incidence at the droplet curvature. An offset of 0.1 mm (
Figure 9c) of height to be lower than the center of the emitted laser beam further reduces the power by 5%. Therefore, it can be concluded that a droplet acts as a localized lens.
5. Conclusions
This paper investigates automotive LiDAR performance degradation in rain from material and optical perspectives through fundamental studies using isolated droplets and various characterizations. The work demonstrates the state-of-the-art LiDAR-grade covers made of polycarbonate panel, which has good optical transmission in dry conditions at 905 nm. Four classes of cover coatings are used, including hydrophilic, almost-hydrophobic, hydrophobic, and superhydrophobic, the water contact angles (WCAs) are measured to be 57°, 82°, 90°, and 152°, respectively. The covers are further characterized by thickness, surface roughness, and the effect of angle of incidence on optical transmittance and reflectance to understand the property dependence of LiDAR vision.
When the LiDAR and cover assembly are exposed to a single droplet, it is observed that LiDAR performance degrades by missing point clouds or reducing signal strengths (reflectivity). The rankings of severity from the least affected to the most affected are superhydrophobic, hydrophilic, almost-hydrophobic, and hydrophobic. It seems counter-intuitive that a hydrophobic cover is an undesired approach to maintaining good LiDAR vision in rain, as there are a lot of commercially available hydrophobic coating products for soiling mitigation purposes. To explain this, the optical studies suggest that a hemispherical droplet formed on the hydrophobic cover has the highest chance of not having the laser beam reach the target object due to refraction and total internal reflection, thus, translating to missing point clouds. Raindrop influence on LiDAR point clouds is numerically modeled and expanded the demonstration onto a wider spectrum of wettability, including a superhydrophilic (WCA~5°) and two more hydrophilic (WCA~25° and ~35°) covers. This paper has focused on the investigation of laser paths during the complex multiphase interactions between air, water droplets, LiDAR cover, and the optical laser beam.
In general, LiDAR performance degrades when adherent droplets are not removed quickly, and the direction of the originally emitted laser path changes such that few beams can reach the target object, this includes both refractions and reflections caused by the adherent droplets acting as localized lenses. This is demonstrated in the phenomenological models proposed, which serve as signal-enhancing criteria. The material and optical analyses performed in this study provided insights into factors influencing LiDAR performance degradation. Based on the findings, several signal-enhancing strategies are recommended. The current work focuses primarily on the optical path and the amount of original laser power able to reach the target object. It provides critical insights for ADAS/AV operation in terms of visibility, i.e., the ability of the vehicle to detect an obstacle. However, in future work, the distance ranging should also be investigated as it is another critical aspect of sensor perception that determines the detection accuracy.