1. Introduction
The province of Nova Scotia, Canada is a coastal region that experiences high rainfall, receiving an average of over 1300 mm of precipitation each year [
1]. Much of the precipitation occurs in the Spring and Fall, which can delay agricultural fieldwork, especially if field drainage is insufficient. The inability to maintain adequate drainage on agricultural fields impedes the aeration of the plant root zone required for crop production [
2]. In Nova Scotia, field drainage is often the limiting factor of the type of crops that can be successfully grown, especially on the dykelands, which are more prone to these challenges [
3]. Dykelands are low-lying agricultural land, reclaimed from the sea, and protected by dykes. These fields are contained within multiple dyke systems along the Bay of Fundy. In Nova Scotia, the total surface area of these dyke systems is 17,401 hectares, of which 9272 hectares are actively used for agriculture [
4].
The soils on the dykelands are characterized by their naturally low permeability, which slows both the downward and lateral movement of water through these soils [
5]. Combined with a flat landscape, this causes water to accumulate on the surface and water-log the fields. However, the agricultural productivity of these soils can be significantly improved through proper surface drainage [
2,
3]—the orderly removal of excess water from the land’s surface. On the dykelands, this is accomplished by shallow ditches, which discharge into larger and deeper collector drains that eventually evacuate excess water into the ocean [
6]. To facilitate the flow of excess water toward the drains, the field is given an artificial slope through land forming [
7], which is the process of mechanically moving soil to change the topography of the field and thereby improving surface drainage [
8]. The soil excavated from the drain is pushed into hills called “crowns”. When these crowns have a uniform slope, surface water from heavy precipitation can effectively run off into the adjoining ditches [
7]. Land forming is the principal drainage technique used on the dykelands. In 2020, it was estimated that 6924 hectares of fields actively used for agriculture in Nova Scotia were land formed [
4].
Assessing the degradation of surface drainage on dykelands remains a complex task due to the unique characteristics of the soil. Traditional assessment methods have relied on visual observations conducted by farmers after rainfall events. These observations typically involved walking the fields to manually identify and mark ponding areas [
2,
9]. Basic surveying tools, such as optical or hand levels, have also been used to measure elevation and map depressions. More recently, surveying-grade Global Navigation Satellite System (GNSS) receivers have been incorporated into the process to improve accuracy [
3]. Despite these advancements, the methods remain labour-intensive, time-consuming, and often too imprecise for detailed assessments. As a result, farmers have traditionally relied on periodic land-forming operations, such as land grading, across entire fields to maintain effective drainage rather than adopting a more targeted approach.
Recent studies have shown that drones equipped with RGB (red, green, blue) cameras can be used to measure plant height in corn fields. Che et al. [
10] and Gilliot et al. [
11] demonstrated that 3D surface models generated from high resolution drone RGB imagery can be used to accurately predict plant height in corn fields. Other studies, such as Bending et al. [
12] and Barrero Farfan et al. [
13], showed that plant height is a good indicator for evaluating plant growth and grain yield. Further studies have shown that drones can effectively assess plant health in agricultural fields using vegetation indices. In Janousek et al. [
14], they examined the effectiveness of various vegetation indices (NDRE, NDVI, GNDVI) derived from drone-mounted multispectral cameras in estimating the quantity of dry matter in corn. Their findings revealed significant correlations between these indices and the nutritional values of dry matter, which are important for yield estimates. Similarly, Tsakmakis et al. [
15] investigated the correlation between Normalized Difference Vegetation Index (NDVI) values and corn yield, finding strong positive correlations (r > 0.8). Macedo et al. [
16] also explored the use of the NDVI to estimate productivity and above-ground biomass in corn. They obtained similar results, demonstrating strong correlations between these indices and corn productivity, underscoring their value in predicting yields. The use of UAV imagery has also been demonstrated for mapping subsurface drainage systems in agricultural fields. Koganti et al. [
17] compared the effectiveness of visible-color, multispectral, and thermal infrared cameras for drainage mapping purposes. Li et al. [
18] utilized Unmanned Aerial Vehicle (UAV)-based LiDAR to enhance flood modelling accuracy by capturing micro terrain features. Chidi et al. [
19] highlighted the importance of high-resolution DEMs in soil erosion estimation, demonstrating significant sensitivity to (Digital Elevation Model) DEM resolution.
The improvement of water movement in the fields, by means of land forming, extends the growing season and enhances the field trafficability early in the Fall [
8]. Over time, however, field topography changes after plowing, and dykeland fields must be reformed—a process is known as “recrowning”. Additionally, if the ditch drains are not properly maintained and become obstructed by sediments, the water table will tend to rise. This results in poor drainage of gravitational water towards the side of the fields, thus reducing crop growth [
7]. The cost associated with recrowning dykelands is estimated to range between
$300 and
$500 an acre and is performed, on average, every ten years [
20]. To date, the negative impacts of poor surface drainage from one season to another have not been well documented on the dykelands, although they have been reported in the literature [
3,
21,
22].
Despite the proven effectiveness of drones and remote sensing in agricultural assessments, there is a lack of studies specifically addressing the evaluation of seasonal changes in surface drainage conditions on dykeland fields in Nova Scotia. The unique characteristics of these fields—such as their low-lying nature, susceptibility to waterlogging, and the practice of land forming—present specific challenges that have not been adequately explored using remote sensing technologies. Unlike previous research focusing primarily on yield estimation, this study uniquely addresses the seasonal monitoring of subtle topographical changes influencing surface drainage. This aspect, which is critical for managing agricultural fields that rely on surface drainage, remains largely underexplored.
The goal of this research is to bridge this knowledge gap by evaluating the accuracy of drones and remote sensing techniques in identifying seasonal changes across agricultural dykeland fields by comparing remote sensing data with ground-truth measurements. Specifically, this study seeks to determine whether these technologies can help farmers identify low-lying areas with poor surface drainage, which may not be evident through traditional methods. By providing accurate data, these assessments aim to support farmers in making informed decisions regarding the frequency and necessity of recrowning dykeland fields. This approach has the potential to optimize field management practices, improve crop yields, and ultimately enhance the economic viability of agricultural operations on the dykelands.
4. Discussion
The results from the UAV-derived CHM demonstrated that the model provided accurate and reliable estimates of corn plant heights. The combination of high R
2, high
ρc, and low RMSE values were all strong indicators of the performance of the CHM. R
2 and RMSE results were consistent with those found in the literature on similar studies [
11,
36,
44,
45]. While the
ρc values demonstrated moderate to strong agreement with ground-measured plant heights it is important to acknowledge some of the inherent limitations of the
ρc metric [
46,
47]. Specifically, the
ρc conflates both precision and bias, making it challenging to distinguish whether the observed agreement stems from high correlation or low bias. For instance, although the
ρc values suggest improved model accuracy in 2022 and 2023, the corresponding increase in RMSE highlights a slight decline in predictive accuracy in 2023, possibly indicating systematic errors [
47].
This decline can be attributed to challenges specific to the growing season of 2023, particularly related to the prevalence of shorter corn plants. Issues with canopy cover and gaps could have created sparser and uneven canopy cover, resulting from shorter plants, which may have led to underestimations of height. In this case, drone imagery would have captured more ground surface than the canopy top. Additionally, less reliable field measurements for short plants are likely to introduce errors, as small variations in measurement can produce larger relative inaccuracies compared to taller plants since RMSE is an absolute measure. For instance, A 10 cm error on a 20 cm plant is a 50% relative error, while the same error on a 100 cm plant is only 10%.
Moreover, since
ρc is sensitive to the variance of the data, the higher values observed in later years may reflect changes in the variability of the measured plant heights rather than true improvements in model performance. Therefore, while
ρc provides a useful indicator of model agreement, it should be interpreted alongside other metrics such as RMSE and R
2 to obtain a more nuanced understanding of model precision and bias [
47].
The results of the study also revealed a relationship between the size of flood risk areas and mean plant height, with Fields C and D showing a negative association and Fields A and B showing a positive one. The reduction in the size of the flood risk zones in Fields A and B can be attributed to the proactive maintenance efforts by the landowner, who addressed minor drainage issues annually (
Table 2). On the other hand, the increasing trends in the size of the flood risk zone for Fields C and D resulted from the minimal slope on land, which hindered adequate surface drainage and the absence of maintenance work on these fields (
Table 2). In these conditions, even minor changes in soil surface caused by farming operations lead to significant variations in yearly productivity. Overall, these findings emphasize that while dry zones typically showed more uniformity, certain years and fields experienced greater inconsistency in plant height, especially in flood-risk zones.
Lastly, results showed that the relationship between NDVI and plant health was inconsistent across all fields. In Field D, NDVI values remained stable throughout the years, which suggested that while NDVI helped identify areas with very short plants and bare spots, particularly in flood risk zones, it was less effective in consistently reflecting subtle differences in plant health that could significantly impact yields. In contrast, Fields A, B, and D exhibited more stable NDVI values across low and high-productivity areas, regardless of plant height, indicating that NDVI alone may not fully capture the variability in plant health across different conditions.
The observed inconsistencies between NDVI values and plant height may have stemmed from the sensitivity of the NDVI to vegetation greenness and canopy density, rather than plant physiological stress directly related to waterlogging. Indeed, corn planted in the flooded areas might have been shorter than those in the rest of the field due to waterlogging stress in early spring. If water had accumulated near the ditches, it could have created anaerobic soil conditions, impairing root development and nutrient uptake during the vegetative stages of corn [
48,
49]. Consequently, the affected plants may have remained shorter, though they might have survived due to the temporary and partial nature of the flooding [
48,
50]. This could have influenced plant height more than leaf greenness, potentially explaining inconsistencies between NDVI values and plant height. Since NDVI primarily reflects leaf health and canopy cover rather than height, plants in flooded areas might have appeared healthy on NDVI maps despite being less productive overall.
4.1. Other Remote Sensing-Based Approaches
While various remote sensing technologies have been employed for drainage assessment in agriculture, this study demonstrates that drone-based photogrammetry offers a particularly effective balance between accuracy, spatial resolution, and operational feasibility. Compared to UAV-LiDAR, which provides high-resolution elevation data suitable for detailed topographic analysis [
18], photogrammetry is significantly more cost-effective and accessible to end-users with limited technical expertise. Although UAVs equipped with LiDAR sensors may perform better in areas with dense vegetation, the higher operational costs and complexity of these systems may limit their adoption for routine field monitoring. In contrast, satellite-based multispectral imagery has been used to detect moisture stress over larger areas [
15,
16]. However, the coarse spatial resolution of these datasets limits their ability to detect subtle micro-topographic changes that influence surface drainage, especially in flat terrains like the dykelands.
Non-remote sensing methods such as ground-based LiDAR and soil moisture sensors also offer valuable insights but face scalability issues. Ground-based LiDAR systems can capture highly accurate elevation data but are time-intensive and expensive to deploy across large agricultural fields [
51]. Similarly, soil moisture sensors provide precise point-based measurements of field conditions but lack the spatial coverage necessary to inform field-scale decisions [
52]. Consequently, while these tools may serve well in validation or targeted monitoring roles, they are less suited for proactive, large-area drainage assessment.
4.2. Field Management Practices & Application to Other Sectors
Differences in field management practices, such as annual ditch maintenance and periodic recrowning, substantially influenced drainage performance and productivity across the fields. Specifically, Fields A and B, characterized by yearly ditch clearing, careful soil management to reduce compaction, and the use of grassed waterways, exhibited improved drainage efficiency and higher productivity. Conversely, Fields C and D, lacking regular ditch maintenance and recrowning over the past decade, experienced increasing flood risk zones and reduced crop productivity.
Beyond dykelands, the techniques developed in this study for assessing and improving surface drainage have potential applications in other sectors facing similar challenges. For example, the peat moss industry in Canada often struggles with surface drainage issues [
53]. Peatlands used for peat moss extraction must be drained to improve agricultural productivity and support heavy machinery [
54]. However, identifying problematic areas for drainage remains a significant challenge. The solution presented in this study could offer a cost-effective alternative for the peat moss industry. Adapting these methodologies could enable peat producers to better identify areas with poor drainage and implement targeted interventions.
4.3. Limitations & Recommendations
One limitation of this study is the assumption that shorter corn plants correlate with reduced yields. While there is a generally positive correlation between plant height and yield, particularly in later growth stages, as demonstrated by Yin et al. [
55] and Kelly et al. [
56], this relationship is not universally consistent. Factors, such as genetics and environmental conditions, can influence yield—as demonstrated by Suazo et al. [
57]. However, Sammis et al. [
58] suggested that corn plant height was a good indicator of water stress levels, which aligns with the findings of this study. These complexities underscore the need to consider multiple factors when assessing plant growth and yield outcomes.
Building on these considerations, the hydrological modelling approach is another key limitation. While the Arc-Malstrøm method efficiently identifies potential flood-prone areas, its reliance on simplified Hortonian flow assumptions and lack of infiltration modelling may limit its accuracy, particularly on soils with variable permeability. Alternative models that incorporate infiltration and evapotranspiration processes, such as physically based hydrological models, could enhance predictions but require significantly more data inputs and computational resources [
59]. Moreover, the Arc-Malstrøm approach is most effective in fields with a relatively flat topography. Indeed, if a field has significant elevation differences, the model may inaccurately represent surface drainage by pooling all water into the lowest elevation. Segmenting the elevation data into smaller sections could enhance accuracy, especially when farmers have previously identified waterlogged and damaged drains.
A third limitation is the limited representability of the fields examined, as dykelands in Nova Scotia are vast, and soil type and field layout across different regions can vary. Such diversity in field characteristics makes it essential to adapt the method before generalizing its effectiveness on all dykelands in Atlantic Canada.
Climatic variations also play an important role in surface water accumulation. Although Bootsma et al. [
60] showed that Crop Heat Units (CHU) differ only slightly between Truro (2500 CHU) and Grand-Pré (2700 CHU), even small shifts in temperature can affect crop growth [
61]. More importantly, variability in rainfall distribution and intensity between years may directly impact water accumulation (
Figure 8). These differences potentially affect seasonal flooding and water retention, which could influence the results of any surface drainage assessment.
Despite these limitations, several practical recommendations emerge from this study.
Based on the findings, farmers are encouraged to proactively conduct annual drone-based assessments to identify areas prone to drainage degradation. These aerial surveys could help locate water-holding depressions caused by soil settlement, allowing targeted land levelling and filling.
In addition to standard drainage maintenance practices, such as removing debris from open ditches, mowing grassed waterways, and maintaining adequate side slopes to prevent erosion, farmers should also focus on minimizing siltation. One effective approach is preserving a three-meter-wide grass buffer strip along ditches [
62]. Regularly inspecting and repairing damaged drainage lines could also ensure efficient water movement [
3]. Furthermore, farmers should prioritize targeted annual ditch cleaning to prevent blockages. These measures, guided by drone-derived insights, could help mitigate waterlogging and improve yields.
5. Conclusions
This study addressed the seasonal degradation of surface drainage on Nova Scotia’s agricultural dykelands using drone-derived elevation models and vegetation indices. By evaluating changes in field topography and crop development from 2021 to 2023, the results demonstrated that drone-based photogrammetry and multispectral imagery offer an effective means of identifying poorly drained areas that may not be visible through traditional methods. The findings revealed a strong negative correlation between the extent of flood risk zones and mean plant height, supporting the use of plant height as a useful indicator of drainage performance. While NDVI values provided additional context, they were less consistent than height measurements in capturing productivity declines in flood-prone areas.
Despite the demonstrated potential of this approach, several limitations should be acknowledged. First, although plant height is a commonly used proxy for productivity, direct yield measurements were not included in this study. While statistical analyses confirmed a significant relationship between plant height and flood zone extent, future work should seek to validate these findings against actual yield data. Second, the flood modelling approach used in this study, while efficient and practical for field-scale applications, is based on simplified hydrologic assumptions and does not account for infiltration or subsurface processes. As a result, flood extent predictions may be influenced by factors such as soil type and rainfall intensity, which were not explicitly modelled.
In addition, the methodology was applied to a limited number of fields within Nova Scotia, and caution should be exercised before generalizing the results to other regions without further validation. Climatic and topographic differences may influence both drainage behavior and the effectiveness of drone-based assessment techniques. Future studies should explore the scalability of this approach across diverse agricultural regions and under varying environmental conditions. Integrating additional remote sensing metrics, such as thermal imagery, could also improve predictions of crop stress.
Lastly, while the methods used in this study relied on commercial software and technical expertise, future work should prioritize the development of user-friendly tools that can be more readily adopted by farmers. A simplified application that allows users to upload a DTM and automatically generate drainage maps could help translate this research into practical on-farm decision-making tools. Improving the accessibility of these technologies may support more proactive drainage management strategies.
Overall, this research highlights the practical value of integrating drone technologies with geospatial analysis to support improved field management on agricultural dykelands. By identifying early signs of drainage degradation and linking them to crop development patterns, this approach can assist farmers in determining when and where recrowning or drainage maintenance may be required, ultimately contributing to improved productivity and long-term field performance.