Figure 1.
Location map of the study area and pavement cross-section. (a) Detail of the Loja–Catamayo corridor (route E35, 36.50 km, station 0+000 at Loja to station 36+500 at Catamayo) overlaid on a digital elevation model of southern Ecuador, with the location of the INAMHI Villonaco automatic meteorological station (3°59′10.6″ S, 79°16′9.9″ W; 2952 m a.s.l.) explicitly indicated together with its Euclidean distances to the two corridor endpoints (7.27 km to Loja; 10.79 km to Catamayo) and to the corridor midpoint (1.80 km).
Figure 1.
Location map of the study area and pavement cross-section. (a) Detail of the Loja–Catamayo corridor (route E35, 36.50 km, station 0+000 at Loja to station 36+500 at Catamayo) overlaid on a digital elevation model of southern Ecuador, with the location of the INAMHI Villonaco automatic meteorological station (3°59′10.6″ S, 79°16′9.9″ W; 2952 m a.s.l.) explicitly indicated together with its Euclidean distances to the two corridor endpoints (7.27 km to Loja; 10.79 km to Catamayo) and to the corridor midpoint (1.80 km).
Figure 2.
Daily air temperature record at the INAMHI Villonaco station, 2024–2025, with IRI campaign dates overlaid.
Figure 2.
Daily air temperature record at the INAMHI Villonaco station, 2024–2025, with IRI campaign dates overlaid.
Figure 3.
Daily precipitation record at the INAMHI Villonaco station, 2024–2025, with IRI campaign dates overlaid.
Figure 3.
Daily precipitation record at the INAMHI Villonaco station, 2024–2025, with IRI campaign dates overlaid.
Figure 4.
Vertical pavement cross-section: layer materials and thicknesses.
Figure 4.
Vertical pavement cross-section: layer materials and thicknesses.
Figure 5.
Structural Number sensitivity envelope under layer-coefficient and drainage-modifier variation.
Figure 5.
Structural Number sensitivity envelope under layer-coefficient and drainage-modifier variation.
Figure 6.
Reconstructed AADT 2015–2025 and three forward-projection scenarios to 2035.
Figure 6.
Reconstructed AADT 2015–2025 and three forward-projection scenarios to 2035.
Figure 7.
Temporal evolution of the corridor-mean IRI across the 11 monitoring campaigns. The lower x-axis reports the calendar date of each campaign; the upper x-axis reports the pavement age in years referenced to the 1 July 2019 rehabilitation completion (
Section 2.2.2), spanning the range 3.70 years (campaign 1) to 6.36 years (campaign 11). The series rises progressively from 2.50 m/km at age 3.70 years (campaign 1) to a peak of 5.85 m/km at age 5.81 years (campaign 9), followed by an unattributed decline to 3.34 m/km at age 6.36 years (campaign 11; see
Section 4.4). Horizontal reference lines at 4.0 m/km and 6.0 m/km mark, respectively, the MTOP operational maintenance and rehabilitation intervention thresholds adopted in the time-to-threshold projections of
Section 3.11. Background colour bands indicate the World Bank IRI condition classes (
Section 2.3.1). The fitted pre-peak linear regression (1.605 m/km/year, R
2 = 0.924) is overlaid to make the deterioration trajectory explicit (see
Section 3.11 for calibration and validation diagnostics).
Figure 7.
Temporal evolution of the corridor-mean IRI across the 11 monitoring campaigns. The lower x-axis reports the calendar date of each campaign; the upper x-axis reports the pavement age in years referenced to the 1 July 2019 rehabilitation completion (
Section 2.2.2), spanning the range 3.70 years (campaign 1) to 6.36 years (campaign 11). The series rises progressively from 2.50 m/km at age 3.70 years (campaign 1) to a peak of 5.85 m/km at age 5.81 years (campaign 9), followed by an unattributed decline to 3.34 m/km at age 6.36 years (campaign 11; see
Section 4.4). Horizontal reference lines at 4.0 m/km and 6.0 m/km mark, respectively, the MTOP operational maintenance and rehabilitation intervention thresholds adopted in the time-to-threshold projections of
Section 3.11. Background colour bands indicate the World Bank IRI condition classes (
Section 2.3.1). The fitted pre-peak linear regression (1.605 m/km/year, R
2 = 0.924) is overlaid to make the deterioration trajectory explicit (see
Section 3.11 for calibration and validation diagnostics).
![Sustainability 18 05674 g007 Sustainability 18 05674 g007]()
Figure 8.
Boxplot of IRI distribution by lane, with Spearman correlation across campaigns.
Figure 8.
Boxplot of IRI distribution by lane, with Spearman correlation across campaigns.
Figure 9.
Inter-campaign IRI change versus cumulative inter-campaign rainfall, with linear reference and labelled windows.
Figure 9.
Inter-campaign IRI change versus cumulative inter-campaign rainfall, with linear reference and labelled windows.
Figure 10.
Spearman correlation matrix of inter-campaign climate descriptors and IRI metrics.
Figure 10.
Spearman correlation matrix of inter-campaign climate descriptors and IRI metrics.
Figure 11.
Antecedent Moisture Index sensitivity heatmap: Spearman ρ across decay factor k and lookback window N.
Figure 11.
Antecedent Moisture Index sensitivity heatmap: Spearman ρ across decay factor k and lookback window N.
Figure 12.
Mann–Kendall τ and significance under progressive truncation of post-peak campaigns.
Figure 12.
Mann–Kendall τ and significance under progressive truncation of post-peak campaigns.
Figure 13.
Predictive IRI deterioration model: observed campaigns and pre-peak linear, exponential, and Gompertz fits, with maintenance (4.0 m/km) and rehabilitation (6.0 m/km) intervention thresholds.
Figure 13.
Predictive IRI deterioration model: observed campaigns and pre-peak linear, exponential, and Gompertz fits, with maintenance (4.0 m/km) and rehabilitation (6.0 m/km) intervention thresholds.
Figure 14.
PSI evolution across IRI campaigns and PSI–IRI relationship on the theoretical curve.
Figure 14.
PSI evolution across IRI campaigns and PSI–IRI relationship on the theoretical curve.
Table 2.
Technical characteristics of the UTPL Villonaco meteorological station and precipitation dataset used in this study.
Table 2.
Technical characteristics of the UTPL Villonaco meteorological station and precipitation dataset used in this study.
| Parameter | Value | Source |
|---|
| Station name | Villonaco (UTPL) | INAMHI |
| Station code | UTPL Villonaco | INAMHI |
| Station type | Automatic (UTPL) | INAMHI |
| Variable recorded | Daily accumulated precipitation (mm/day) | INAMHI |
| UTM X (Zone 17S) | 692,138 m | INAMHI |
| UTM Y (Zone 17S) | 9,559,012 m | INAMHI |
| Elevation | 2952 m a.s.l. | INAMHI |
| Distance to Loja end | 7.27 km (corridor start, 2100 m a.s.l.) | Calculated |
| Distance to Catamayo end | 10.79 km (corridor end, 1267 m a.s.l.) | Calculated |
| Distance to corridor midpoint | 1.80 km | Calculated |
| Altitudinal difference vs. corridor mean (~1683 m a.s.l.) | +1269 m | Calculated |
| Record period | 1 January 2024–31 December 2025 | Source files |
| Total records | 731 (366 in 2024 + 365 in 2025) | Source files |
Table 3.
Monthly accumulated precipitation totals recorded at the INAMHI Villonaco station (2024–2025), with seasonal classification.
Table 3.
Monthly accumulated precipitation totals recorded at the INAMHI Villonaco station (2024–2025), with seasonal classification.
| Month | 2024 (mm) | Season | 2025 (mm) | Season |
|---|
| January | 48.29 | Dry | 183.67 | Wet |
| February | 134.11 | Wet | 284.57 | Wet |
| March | 60.76 | Wet | 212.78 | Wet |
| April | 83.51 | Wet | 252.37 | Wet |
| May | 30.70 | Wet | 76.46 | Wet |
| June | 38.02 | Dry | 61.77 | Dry |
| July | 12.25 | Dry | 35.37 | Dry |
| August | 7.51 | Dry | 24.64 | Dry |
| September | 6.78 | Dry | 8.26 | Dry |
| October | 8.77 | Wet | 57.87 | Wet |
| November | 17.17 | Wet | 113.04 | Wet |
| December | 226.40 | Wet | 46.47 | Wet |
| Annual total | 674.27 | — | 1357.27 | — |
Table 4.
MTOP vehicle classification categories recorded in the base-year AADT survey for the Loja–Catamayo corridor.
Table 4.
MTOP vehicle classification categories recorded in the base-year AADT survey for the Loja–Catamayo corridor.
| MTOP Category | Vehicle Type | Recorded in Base-Year Survey |
|---|
| Light vehicle | Passenger cars, taxis, and pickup trucks (≤3.5 t) | Yes—CAGR 6.37% |
| Bus | Intercantonal and interprovincial buses | Yes |
| 2-axle truck | 2-axle rigid trucks | Yes |
| 3-axle truck | 3-axle rigid trucks | Yes |
| Articulated vehicle | Semi-articulated trucks (tractor-trailer) | Yes |
| Unclassified | Vehicles not assigned to an MTOP category | Yes—CAGR 6.34% |
Table 5.
Descriptive statistics of daily climatic variables at the INAMHI Villonaco station, 2024–2025.
Table 5.
Descriptive statistics of daily climatic variables at the INAMHI Villonaco station, 2024–2025.
| Variable | n | Mean | SD | Min | 25th Percentile | Median | 75th Percentile | Max | Skewness | CV (%) |
|---|
| rainfall | 731 | 2.78 | 6.40 | 0 | 0 | 0.5 | 1.76 | 54.57 | 3.89 | 230.36 |
| T_max | 731 | 14.94 | 3.99 | 7.1 | 11.8 | 14.2 | 16.9 | 29.8 | 1.11 | 26.72 |
| T_mean | 731 | 11.06 | 1.40 | 6.2 | 10.1 | 11.1 | 11.9 | 15.5 | −0.04 | 12.67 |
| T_min | 731 | 9.12 | 1.06 | 4 | 8.5 | 9.3 | 9.9 | 11.5 | −0.72 | 11.57 |
| dT_daily | 731 | 5.81 | 4.02 | 0.8 | 2.7 | 5 | 7.55 | 22.2 | 1.50 | 69.07 |
Table 6.
Monthly climate summary and refined rain/thermal regime classification, 2024–2025.
Table 6.
Monthly climate summary and refined rain/thermal regime classification, 2024–2025.
| Month | P Month 2024 | P Month 2025 | T Mean m 2024 | T Mean m 2025 | dT Mean m 2024 | dT Mean m 2025 | Rain Regime 2024 | Rain Regime 2025 | Thermal Regime 2024 | Thermal Regime 2025 |
|---|
| Jan | 48.29 | 183.67 | 11.670 | 11.052 | 4.713 | 5.152 | Dry | Wet | Moderate cycle | Moderate cycle |
| Feb | 134.11 | 284.57 | 11.789 | 11.371 | 5.059 | 5.786 | Wet | Extreme | Moderate cycle | Moderate cycle |
| Mar | 60.76 | 212.78 | 12.084 | 11.700 | 5.774 | 7.045 | Transitional | Extreme | Moderate cycle | High cycle |
| Apr | 83.51 | 252.37 | 11.917 | 11.640 | 5.277 | 6.433 | Transitional | Extreme | Moderate cycle | Moderate cycle |
| May | 30.7 | 76.46 | 11.703 | 10.545 | 4.500 | 4.126 | Dry | Transitional | Moderate cycle | Moderate cycle |
| Jun | 38.02 | 61.77 | 10.807 | 10.040 | 4.710 | 3.663 | Dry | Transitional | Moderate cycle | Low cycle |
| Jul | 12.25 | 35.37 | 9.319 | 8.581 | 3.668 | 3.309 | Dry | Dry | Low cycle | Low cycle |
| Aug | 7.51 | 24.64 | 10.271 | 9.490 | 5.458 | 4.184 | Dry | Dry | Moderate cycle | Moderate cycle |
| Sep | 6.78 | 8.26 | 10.833 | 9.903 | 5.623 | 3.923 | Dry | Dry | Moderate cycle | Low cycle |
| Oct | 8.77 | 57.87 | 11.865 | 10.932 | 7.919 | 5.803 | Dry | Transitional | High cycle | Moderate cycle |
| Nov | 17.17 | 113.04 | 12.757 | 11.513 | 13.933 | 6.030 | Dry | Wet | High cycle | Moderate cycle |
| Dec | 226.4 | 46.47 | 11.532 | 12.187 | 6.419 | 11.045 | Extreme | Dry | Moderate cycle | High cycle |
Table 7.
Pavement structural section of the Loja–Catamayo corridor.
Table 7.
Pavement structural section of the Loja–Catamayo corridor.
| Layer | Thickness (m) | Material | Thickness (in) | Thickness (cm) | Role |
|---|
| Asphalt Concrete (Surface) | 0.20 | Hot Mix Asphalt (HMA) | 7.87 | 20 | HMA surface |
| Granular Base | 0.25 | Class 1 (100% Crushed) | 9.84 | 25 | granular base |
| Granular Sub-base | 0.30 | Class 3 | 11.81 | 30 | granular subbase |
| Subgrade Improvement | 0.40 | Select Borrow Material | 15.74 | 40 | subgrade improvement |
Table 8.
Structural Number sensitivity grid: AASHTO 1993 layer-coefficient and drainage-modifier combinations.
Table 8.
Structural Number sensitivity grid: AASHTO 1993 layer-coefficient and drainage-modifier combinations.
| a Level | m Level | SN |
|---|
| low | poor | 5.04 |
| central | poor | 5.53 |
| high | poor | 5.61 |
| low | good | 5.51 |
| central | good | 6.06 |
| high | good | 6.14 |
| low | very good | 5.98 |
| central | very good | 6.60 |
| high | very good | 6.68 |
Table 9.
Design ESAL capacity at the central Structural Number for three subgrade resilient modulus levels.
Table 9.
Design ESAL capacity at the central Structural Number for three subgrade resilient modulus levels.
| SN | MR (psi) | W18 (Million ESALs) |
|---|
| 5.04 | 4000 | 7.30 |
| 6.06 | 4000 | 30.87 |
| 6.68 | 4000 | 67.45 |
| 5.04 | 7500 | 31.38 |
| 6.06 | 7500 | 132.70 |
| 6.68 | 7500 | 289.96 |
| 5.04 | 10,000 | 61.17 |
| 6.06 | 10,000 | 258.65 |
| 6.68 | 10,000 | 565.20 |
Table 10.
Longitudinal sections of the Loja–Catamayo corridor: chainage, length, average gradient, slope category, and approximate elevation change.
Table 10.
Longitudinal sections of the Loja–Catamayo corridor: chainage, length, average gradient, slope category, and approximate elevation change.
| Section Station | Km Start | Km End | Length (km) | Slope (%) | Slope Category | Elev Change (m Approx.) |
|---|
| 0+000–11+300 | 0 | 11.3 | 11.3 | 4.6 | Moderate | 520 |
| 11+300–22+000 | 11.3 | 22 | 10.7 | 4.5 | Moderate | 482 |
| 22+00–36+500 | 22 | 36.5 | 14.5 | 7 | Steep | 1015 |
Table 11.
Reconstructed AADT by vehicle class, 2015–2025.
Table 11.
Reconstructed AADT by vehicle class, 2015–2025.
| Vehicle Type | 2015 | 2016 | 2017 | 2018 | 2019 | 2020 | 2021 | 2022 | 2023 | 2024 | 2025 |
|---|
| Heavy truck | 63 | 78 | 92 | 107 | 121 | 87 | 104 | 111 | 118 | 125 | 133 |
| Light truck | 1068 | 1106 | 1145 | 1183 | 1221 | 1385 | 1763 | 1872 | 1988 | 2111 | 2242 |
| Light vehicle | 5365 | 5668 | 5971 | 6274 | 6577 | 8291 | 8506 | 9033 | 9593 | 10,188 | 10,820 |
Table 12.
Compound annual growth-rate scenarios by vehicle class: pre-COVID, post-COVID, and full period.
Table 12.
Compound annual growth-rate scenarios by vehicle class: pre-COVID, post-COVID, and full period.
| Vehicle Type | AADT First | AADT 2019 | AADT 2020 | AADT Last | CAGR Pre-COVID [%] | CAGR Post-COVID [%] | CAGR Full [%] |
|---|
| Heavy truck | 63 | 121 | 87 | 133 | 17.72 | 8.86 | 7.76 |
| Light truck | 1068 | 1221 | 1385 | 2242 | 3.4 | 10.11 | 7.7 |
| Light vehicle | 5365 | 6577 | 8291 | 10,820 | 5.22 | 5.47 | 7.27 |
Table 13.
Projected AADT by vehicle class and scenario for the 2030 and 2035 horizons.
Table 13.
Projected AADT by vehicle class and scenario for the 2030 and 2035 horizons.
| Vehicle Type | AADT First | AADT 2019 | AADT 2020 | AADT Last | CAGR Pre-COVID [%] | CAGR Post-COVID [%] | CAGR Full [%] | AADT 2030 Lower | AADT 2030 Central | AADT 2030 Upper | AADT 2035 Lower | AADT 2035 Central | AADT 2035 Upper |
|---|
| Heavy truck | 63 | 121 | 87 | 133 | 17.72 | 8.86 | 7.76 | | 203 | 193 | 680 | 311 | 281 |
| Light truck | 1068 | 1221 | 1385 | 2242 | 3.4 | 10.11 | 7.7 | 2650 | 3629 | 3249 | 3132 | 5874 | 4708 |
| Light vehicle | 5365 | 6577 | 8291 | 10,820 | 5.22 | 5.47 | 7.27 | 13,955 | 14,121 | 15,368 | 17,997 | 18,430 | 21,828 |
Table 14.
Classified daily vehicle count, Loja–Catamayo corridor, 6–12 May 2024.
Table 14.
Classified daily vehicle count, Loja–Catamayo corridor, 6–12 May 2024.
| Day | Date | Light Vehicle | Light Truck | Heavy Truck | Daily Total |
|---|
| Monday | 6 May 2024 | 9169 | 1900 | 140 | 11,209 |
| Tuesday | 7 May 2024 | 8864 | 1837 | 145 | 10,846 |
| Wednesday | 8 May 2024 | 9067 | 1879 | 145 | 11,091 |
| Thursday | 9 May 2024 | 9373 | 1942 | 140 | 11,455 |
| Friday | 10 May 2024 | 11,716 | 2428 | 130 | 14,274 |
| Saturday | 11 May 2024 | 10,901 | 2259 | 95 | 13,255 |
| Sunday | 12 May 2024 | 12,226 | 2533 | 80 | 14,839 |
Table 15.
Calibration cross-check: 2024 reconstructed AADT against the May 2024 weekly classified count.
Table 15.
Calibration cross-check: 2024 reconstructed AADT against the May 2024 weekly classified count.
| Vehicle Type | AADT 2024 TPDA | AADT 2024 Weekly Count | Δ (abs) | Δ [%] |
|---|
| Light vehicle | 10,188 | 10,188 | 0 | 0 |
| Light truck | 2111 | 2111 | 0 | 0 |
| Heavy truck | 125 | 125 | 0 | 0 |
Table 16.
Daily ESAL contribution and 2035 projection by vehicle class under the central scenario, with AASHTO 1993 Load Equivalency Factors.
Table 16.
Daily ESAL contribution and 2035 projection by vehicle class under the central scenario, with AASHTO 1993 Load Equivalency Factors.
| Vehicle Type | AADT Latest | AADT 2035 Central | LEF | Daily ESAL Latest | Daily ESAL 2035 | Pct of Total ESAL |
|---|
| Light vehicle | 10,820 | 18,430 | 0.0004 | 4.33 | 7.37 | 1.4 |
| Light truck | 2242 | 5874 | 0.05 | 112.1 | 293.7 | 35.5 |
| Heavy truck | 133 | 311 | 1.5 | 199.5 | 466.5 | 63.1 |
Table 17.
Descriptive statistics of IRI by lane and corridor mean across the 11 monitoring campaigns.
Table 17.
Descriptive statistics of IRI by lane and corridor mean across the 11 monitoring campaigns.
| Variable | n | Mean | sd | Min | p25 | Median | p75 | Max | Skewness | CV (%) |
|---|
| IRI left | 11 | 4.125 | 1.289 | 2.5 | 3.205 | 3.86 | 5.45 | 5.86 | 0.162 | 31.245 |
| IRI right | 11 | 3.888 | 1.08 | 2.49 | 3.325 | 3.78 | 4.215 | 6.4 | 0.754 | 27.766 |
| IRI mean | 11 | 4.007 | 1.102 | 2.495 | 3.27 | 3.81 | 4.923 | 5.85 | 0.101 | 27.509 |
Table 18.
Annual IRI summary and corresponding pavement age, 2023–2025.
Table 18.
Annual IRI summary and corresponding pavement age, 2023–2025.
| Year | n | Mean IRI | Sd IRI | Min IRI | Max IRI | Mean Pavement Age (Years) | Δ IRI vs. Prior Year (m/km) | ANNUALISED Rate (m/km·yr−1) 1 |
|---|
| 2023 | 3 | 2.748 | 0.392 | 2.495 | 3.2 | 4.02 | - | - |
| 2024 | 4 | 4.324 | 0.787 | 3.495 | 5.045 | 5.02 | +1.576 | +1.58 |
| 2025 | 4 | 4.634 | 1.042 | 3.34 | 5.85 | 5.95 | +0.310 | +0.33 |
Table 19.
Distribution of IRI campaign means across World Bank condition classes.
Table 19.
Distribution of IRI campaign means across World Bank condition classes.
| IRI Class | n | Percentage of Campaigns in Each Class |
|---|
| Excellent | 0 | 0 |
| Good | 6 | 54.5 |
| Fair | 5 | 45.5 |
| Poor | 0 | 0 |
| Very Poor | 0 | 0 |
Table 20.
Kruskal–Wallis tests of mean IRI across the refined rain and thermal regimes.
Table 20.
Kruskal–Wallis tests of mean IRI across the refined rain and thermal regimes.
| Test | Chi sqr | df | p | n |
|---|
| Kruskal–Wallis IRI~rain regime | 3.208 | 2 | 0.2011 | 8 |
| Kruskal–Wallis IRI~thermal regime | 1.194 | 2 | 0.5503 | 8 |
Table 21.
Spearman correlations between inter-campaign climate exposure descriptors and IRI change, n = 7.
Table 21.
Spearman correlations between inter-campaign climate exposure descriptors and IRI change, n = 7.
| Descriptor | n | ρ | p | p < 0.05 |
|---|
| P cum | 7 | −0.143 | 0.76 | False |
| P mean | 7 | −0.143 | 0.76 | False |
| N heavy rain | 7 | −0.143 | 0.76 | False |
| T mean avg | 7 | 0.286 | 0.535 | False |
| dT mean | 7 | 0.357 | 0.432 | False |
| dT max | 7 | 0 | 1 | False |
| N thermal | 7 | 0.079 | 0.867 | False |
| AMI end | 7 | −0.143 | 0.76 | False |
Table 22.
Antecedent Moisture Index sensitivity grid: Spearman correlation between AMI and IRI mean across 25 specifications.
Table 22.
Antecedent Moisture Index sensitivity grid: Spearman correlation between AMI and IRI mean across 25 specifications.
| k | N | ρ (AMI, IRI) | p | n |
|---|
| 0.85 | 7 | −0.476 | 0.233 | 8 |
| 0.9 | 7 | −0.476 | 0.233 | 8 |
| 0.93 | 7 | −0.476 | 0.233 | 8 |
| 0.95 | 7 | −0.476 | 0.233 | 8 |
| 0.97 | 7 | −0.476 | 0.233 | 8 |
| 0.85 | 14 | −0.167 | 0.693 | 8 |
| 0.9 | 14 | −0.167 | 0.693 | 8 |
| 0.93 | 14 | −0.167 | 0.693 | 8 |
| 0.95 | 14 | −0.167 | 0.693 | 8 |
| 0.97 | 14 | −0.214 | 0.61 | 8 |
| 0.85 | 30 | −0.071 | 0.867 | 8 |
| 0.9 | 30 | −0.024 | 0.955 | 8 |
| 0.93 | 30 | 0.024 | 0.955 | 8 |
| 0.95 | 30 | 0.024 | 0.955 | 8 |
| 0.97 | 30 | 0.024 | 0.955 | 8 |
| 0.85 | 60 | −0.036 | 0.939 | 7 |
| 0.9 | 60 | 0 | 1 | 7 |
| 0.93 | 60 | 0 | 1 | 7 |
| 0.95 | 60 | 0 | 1 | 7 |
| 0.97 | 60 | 0 | 1 | 7 |
| 0.85 | 90 | −0.036 | 0.939 | 7 |
| 0.9 | 90 | 0 | 1 | 7 |
| 0.93 | 90 | 0 | 1 | 7 |
| 0.95 | 90 | 0 | 1 | 7 |
| 0.97 | 90 | 0.107 | 0.819 | 7 |
Table 23.
Mann–Kendall trend statistics under progressive truncation of post-peak campaigns.
Table 23.
Mann–Kendall trend statistics under progressive truncation of post-peak campaigns.
| Truncation | n | τ | p | Significant |
|---|
| Drop last 0 | 11 | 0.491 | 0.043 | True |
| Drop last 1 | 10 | 0.689 | 0.007 | True |
| Drop last 2 | 9 | 0.833 | 0.002 | True |
| Drop last 3 | 8 | 0.786 | 0.009 | True |
| Drop last 4 | 7 | 0.905 | 0.007 | True |
Table 24.
Predictive IRI deterioration models: calibration and validation across four train/test splits and three model specifications.
Table 24.
Predictive IRI deterioration models: calibration and validation across four train/test splits and three model specifications.
| Calibration Sample Size (k) | Model | n Calibration | n Validation | Key Parameter(s) of the Fitted Model | R2 (Train) | RMSE (Test, m/km) | MAPE (Test, %) |
|---|
| 6 | Linear | 6 | 5 | slope = 1.524 m/km/yr | 0.838 | 1.486 | 27.2 |
| 6 | Exponential | 6 | 5 | rate = 55.27%/yr | 0.869 | 2.193 | 38.9 |
| 6 | Gompertz | 6 | 5 | A = 15.000; B = 1.887; C = 0.310 | 0.849 | 1.620 | 29.2 |
| 7 | Linear | 7 | 4 | slope = 1.605 m/km/yr | 0.891 | 1.766 | 35.0 |
| 7 | Exponential | 7 | 4 | rate = 56.02%/yr | 0.910 | 2.503 | 49.7 |
| 7 | Gompertz | 7 | 4 | A = 15.000; B = 1.898; C = 0.321 | 0.901 | 1.891 | 37.3 |
| 8 | Linear | 8 | 3 | slope = 1.512 m/km/yr | 0.901 | 1.897 | 42.1 |
| 8 | Exponential | 8 | 3 | rate = 51.31%/yr | 0.912 | 2.529 | 54.2 |
| 8 | Gompertz | 8 | 3 | A = 15.000; B = 1.869; C = 0.297 | 0.905 | 1.989 | 43.8 |
| 9 | Linear | 9 | 2 | slope = 1.605 m/km/yr | 0.924 | 2.473 | 64.3 |
| 9 | Exponential | 9 | 2 | rate = 51.81%/yr | 0.934 | 3.139 | 81.8 |
| 9 | Gompertz | 9 | 2 | A = 15.000; B = 1.892; C = 0.313 | 0.930 | 2.571 | 67.0 |
Table 25.
Time-to-threshold projections for the maintenance and rehabilitation IRI thresholds derived from the pre-peak deterioration model.
Table 25.
Time-to-threshold projections for the maintenance and rehabilitation IRI thresholds derived from the pre-peak deterioration model.
| Model | Threshold | t (Years from First Campaign) | Projected Date | Pavement Age at Threshold (Years) |
|---|
| Linear | 4 | 1.119 | 24 April 2024 | 4.82 |
| Linear | 6 | 2.365 | 23 July 2025 | 6.06 |
| Exponential | 4 | 1.22 | 31 May 2024 | 4.92 |
| Exponential | 6 | 2.191 | 20 May 2025 | 5.89 |
| Gompertz | 4 | 1.146 | 4 May 2024 | 4.84 |
| Gompertz | 6 | 2.317 | 5 July 2025 | 6.01 |
Table 26.
PSI derived from IRI for each monitoring campaign, with class assignment.
Table 26.
PSI derived from IRI for each monitoring campaign, with class assignment.
| Campaign | Date | IRI Mean | PSI | PSI Class |
|---|
| 1 | 12 March 2023 | 2.495 | 2.615 | Poor (2.0–3.0) |
| 2 | 6 August 2023 | 2.55 | 2.578 | Poor (2.0–3.0) |
| 3 | 1 October 2023 | 3.20 | 2.177 | Poor (2.0–3.0) |
| 4 | 23 February 2024 | 3.81 | 1.858 | Very Poor (<=2.0) |
| 5 | 17 May 2024 | 3.495 | 2.017 | Poor (2.0–3.0) |
| 6 | 6 September 2024 | 4.945 | 1.384 | Very Poor (<=2.0) |
| 7 | 16 November 2024 | 5.045 | 1.348 | Very Poor (<=2.0) |
| 8 | 27 January 2025 | 4.90 | 1.400 | Very Poor (<=2.0) |
| 9 | 20 April 2025 | 5.85 | 1.094 | Very Poor (<=2.0) |
| 10 | 20 July 2025 | 4.445 | 1.576 | Very Poor (<=2.0) |
| 11 | 9 November 2025 | 3.34 | 2.100 | Poor (2.0–3.0) |