| Literature DB >> 34188359 |
Isabella Aitkenhead1,2, Yuriy Kuleshov2,3,4, Andrew B Watkins2, Jessica Bhardwaj1,2, Atifa Asghari1,2.
Abstract
The Northern Murray-Darling Basin (MDB) is a key Australian agricultural region requiring efficient Agricultural Drought Management (ADM), focused on resilience. Although a need for resilience in local farming communities has long been recognised, previous studies assessing ADM in the Northern MDB did not consider two key elements of resilient management: proactivity (preparing for drought prior to a drought event) and suitability (localised drought management targeted at decision-makers). This study assessed the current ADM Strategy (ADMS) implemented within five selected Northern MDB Local Government Areas (LGAs) (Paroo Shire, Balonne Shire, Murweh Shire, Maranoa Region, and Goondiwindi Region), specifically investigating the extent of ADMS proactivity, effectiveness, and suitability. To investigate suitability, drought risk extent of each LGA was determined. A region-specific drought risk index consisting of hazard, vulnerability and exposure indices was developed; risk mapping was conducted. All LGAs displayed very high levels of drought risk due to hazardous climatic conditions, vulnerable socio-economic attributes, and drought-exposed geographical features. A Criteria-Based Ranking (CBR) survey produced a quantitative effectiveness and proactivity rank for each major ADMS used in the Northern MDB. Government Assistance was the most proactive and effective ADMS. Strategy effectiveness ranks of the major ADMS used and drought risk extent found in each LGA were correlated to determine ADMS suitability. Overall, Balonne Shire and the Goondiwindi Region were identified as high priority areas requiring improved ADM. A user-centred Integrated Early Warning System (I-EWS) for drought could potentially increase ADM proactivity and suitability in such areas, strengthening drought resilience of farming communities. © Crown 2021.Entities:
Keywords: Agricultural Drought Management Strategy; Australia; Climate resilience; Climate risk; Drought preparedness; Early warning system for drought; Northern Murray–Darling Basin
Year: 2021 PMID: 34188359 PMCID: PMC8221744 DOI: 10.1007/s11069-021-04884-6
Source DB: PubMed Journal: Nat Hazards (Dordr) ISSN: 0921-030X
Fig. 1Thirty-six-monthly rainfall deficiency for Australia
Fig. 2Spatial extent showing the five LGAs—Balonne Shire, Goondiwindi Region, Maranoa Region, Murweh Shire and Paroo Shire—in the context of Queensland
Hazard, vulnerability, and exposure index levels for each of the five LGAs investigated (Paroo Shire, Murweh Shire, Balonne Shire, Maranoa Region and Goondiwindi Region) for 2017, 2018, 2019 and 2020 (from Jan to Dec in 2017, 2018, and 2019 and from Jan to Jul in 2020)
Index level is shown on a 0–1 orange colour scale, spanning from pale orange [Mild (0.01–0.25)], to deep orange/brown [Extreme (0.76–1.00)]
Fig. 3Drought risk maps for 2017, 2018, 2019, and 2020 (from Jan to Dec in 2017, 2018 and 2019 and from Jan to Jul in 2020) indicating drought risk on an LGA level, in Paroo Shire [Regional Hub (RH) Cunnamulla], Murweh Shire (RH Charleville), Balonne Shire (RH St George), Maranoa Region (RH Roma) and Goondiwindi Region (RH Goondiwindi). Drought risk extent is shown on a 0–1 orange colour scale, spanning from pale orange [Little Risk (≤ 0.25)] to deep orange/brown [Extreme Risk (≤ 1.0)]
Hazard, vulnerability, exposure, and risk index levels for each of the five LGAs investigated (Paroo Shire, Murweh Shire, Balonne Shire, Maranoa Region and Goondiwindi Region) for the seasonal periods in the past year (from Spring 2019 to Winter 2020)
Index level is shown on a 0–1 orange colour scale, spanning from pale orange [Mild (0.01–0.25)], to deep orange/brown [Extreme (0.76–1.00)]
Validation of the final drought risk maps by correlating soil moisture data with both the hazard index informing the final drought risk maps, and the drought risk value of the final drought risk maps, for the seasonal maps of 2019–2020 (spring, summer, autumn, winter)
| Season (2019–2020 year) | Layer | Layer statistics | Correlation matrix | |||||
|---|---|---|---|---|---|---|---|---|
| MIN | MAX | MEAN | STD | Hazard Index | Drought risk | Seasonal SWCEM Soil Moisture (SMOPS average) | ||
| Spring (September–November 2019) | Hazard Index | 0.00 | 0.84 | 0.04 | 0.15 | 1.00 | 0.87 | 0.87 |
| Drought Risk | 0.00 | 0.90 | 0.08 | 0.24 | 0.87 | 1.00 | 1.00 | |
| Seasonal SWCEM Soil Moisture (SMOPS average) | 0.00 | 0.20 | 0.02 | 0.05 | 0.87 | 1.00 | 1.00 | |
| Summer (December 2019–February 2020) | Hazard Index | 0.00 | 0.78 | 0.06 | 0.18 | 1.00 | 0.98 | 0.96 |
| Drought risk | 0.00 | 0.87 | 0.09 | 0.26 | 0.98 | 1.00 | 0.99 | |
| Seasonal SWCEM Soil Moisture (SMAP average) | 0.00 | 0.25 | 0.02 | 0.06 | 0.96 | 0.99 | 1.00 | |
| Autumn (March 2020–May 2020) | Hazard Index | 0.00 | 0.33 | 0.02 | 0.07 | 1.00 | 0.94 | 0.89 |
| Drought risk | 0.00 | 0.82 | 0.07 | 0.22 | 0.94 | 1.00 | 0.98 | |
| Seasonal SWCEM Soil Moisture (SMAP average) | 0.00 | 0.23 | 0.02 | 0.06 | 0.89 | 0.98 | 1.00 | |
| Winter (June 2020–July 2020) | Hazard Index | 0.00 | 0.50 | 0.03 | 0.12 | 1.00 | 0.92 | 0.89 |
| Drought risk | 0.00 | 0.85 | 0.08 | 0.23 | 0.92 | 1.00 | 0.99 | |
| Seasonal SWCEM Soil Moisture (SMAP average) | 0.00 | 0.23 | 0.02 | 0.05 | 0.89 | 0.99 | 1.00 | |
Current suitability of ADM in each of the five selected LGAs
| LGA | Main strategy | Effectiveness ranking score | Main land use type | Current (2020) Drought risk level | Suitability |
|---|---|---|---|---|---|
| Goondiwindi Region | MDB Plan | 409 (tied 2nd) | Grazing native vegetation | Extreme | Not suitable |
| Balonne Shire | Water Trading | 397 (tied 2nd) | Irrigated cropping | Severe | Slightly suitable |
| Paroo Shire | Government Assistance | 540 (1st) | Grazing native vegetation | Severe | Suitable |
| Maranoa Region | Government Assistance | 540 (1st) | Dryland cropping | Extreme | Very suitable |
| Murweh Shire | Government Assistance | 540 (1st) | Dryland cropping | Extreme | Very suitable |
Summary of discussion on the main risk, hazard, vulnerability, and exposure index results for the 5 LGAs investigated during 2020
| Index | LGA | Level | Discussion |
|---|---|---|---|
| Risk | Goondiwindi Region | Extreme | Goondiwindi Region displayed moderate drought hazard and vulnerability levels and an extreme exposure level. Combined, these high index levels contributed to an Extreme risk level |
| Balonne Shire | Severe | Balonne Shire displayed the lowest exposure level (albeit still severe), and a lower hazard level compared to the other LGAs. Although Balonne Shire displayed a higher vulnerability level than all other LGAs apart from Paroo Shire, due to the reliance on agricultural occupation and low average household income, this did not negate the fact that Balonne Shire did not display greater levels for both drought hazard and exposure | |
| Paroo Shire | Severe | Paroo Shire showed the lowest level of drought hazard (mild) compared to the other LGAs. Whilst Paroo Shire displayed a higher vulnerability level than the other LGAs (except for Balonne Shire), and an extreme exposure level, this did not override the very low hazard level | |
| Maranoa Region | Extreme | The Maranoa Region displayed a severe drought hazard, moderate vulnerability level, and an extreme exposure level which meant a very high level of drought risk | |
| Murweh Shire | Extreme | Murweh Shire displayed similar index levels to the Maranoa Region, with a current severe hazard level, moderate vulnerability level, and an extreme level of exposure. This contributed to a very high level of overall drought risk | |
| Hazard | Goondiwindi Region | Moderate | The Goondiwindi Region, along with Balonne Shire and the Maranoa Region, has a semi-arid climate with very hot summers and warm dry winters (Qureshi et al. |
| Balonne Shire | Mild | Along with the Goondiwindi Region and Maranoa Region, Balonne Shire has more extreme climactic conditions compared to the other LGAs. Despite this, Balonne Shire displayed a mild level of hazard. This may have been attributed to increased rainfall in the region at the beginning of 2020, particularly in the autumn months | |
| Paroo Shire | Mild | It would be expected that Paroo Shire would display a similar hazard level to Murweh Shire as they experience the same climate characteristics (Dayal et al. | |
| Maranoa Region | Severe | The Maranoa Region shares the more extreme climactic conditions of the Goondiwindi Region and Balonne Shire, so the severe current hazard level for the Maranoa Region is rational | |
| Murweh Shire | Severe | It would be expected that Murweh Shire would have a similarly mild level of drought hazard as Paroo Shire due to shared climactic characteristics that are less extreme than those of the other LGAs (Phelps and Kelly | |
| Vulnerability | Goondiwindi Region | Moderate | Although the Goondiwindi Region has a strong reliance on the agricultural industry, with high levels of agricultural occupation, it has a very healthy level of average household income and thus only displayed moderate vulnerability |
| Balonne Shire | Severe | Balonne Shire displayed the strongest reliance on the agricultural industry, so this LGA displayed severe vulnerability similar to Paroo Shire | |
| Paroo Shire | Severe | Paroo Shire had the lowest household income out of the five LGAs. As determined by Saha et al. ( | |
| Maranoa Region | Moderate | As Murweh Shire, along with the Maranoa Region, has primarily healthy levels of average household income, and a reduced reliance on the agricultural industry (but still moderately rely on agriculture) compared to the other LGAs, it displayed a moderate extent of vulnerability to drought | |
| Murweh Shire | Moderate | Like Murweh Shire, the Maranoa Region has a healthy level of average household income, and a reduced reliance on the agricultural industry compared to the other LGAs. Thus, the Maranoa Region also displayed only a moderate drought vulnerability level | |
| Exposure | Goondiwindi Region | Extreme | As the Goondiwindi Region and Paroo Shire displayed similar elevation to Balonne Shire but were indicated to have higher degrees of drought exposure, the difference in exposure levels is most likely explained b variation in main land use type. Grazing native vegetation in the Goondiwindi Region is moderately exposed to drought, as it degrades significantly after long periods (years) of drought, though is resilient in short term drought events (White and Walcott |
| Balonne Shire | Severe | The major land use type in Balonne Shire is irrigated cropping. Irrigated cropping is less exposed to dry conditions when compared to grazing native vegetation (in the Goondiwindi Region and Paroo Shire) and dryland cropping (in the Maranoa Region and Murweh Shire) (Bodner et al. | |
| Paroo Shire | Extreme | As with the Goondiwindi Region, grazing native vegetation in Paroo Shire is moderately exposed to drought | |
| Maranoa Region | Extreme | Dryland cropping in the Maranoa Region is increasingly exposed to drought as dryland crops are known for being severely exposed to drought stress, resulting in constrained crop productivity (Kaushal and Wani | |
| Murweh Shire | Extreme | Like in the Maranoa Region, dryland cropping in Murweh Shire is highly exposed to drought. If very highly exposed LGAs like Murweh Shire transitioned to a less exposed main land use type, drought exposure extent may be decreased and agricultural production could be sustained in times of drought (Oliver and Morecroft |
An analysis of the major limitations of each of the major ADMSs used in the Northern MDB
| ADMS | Major Limitations |
|---|---|
| MDB plan | 1. Lack of coordination and cooperation between stakeholders (Connell and Grafton |
| 2. Gap between the Queensland government’s implementation of the plan, and a lack of public understanding of the plan’s objectives in local Northern MDB communities (Connell and Grafton | |
| Water trading | 1. Challenge of accounting for the highly variable nature of water use in different Northern MDB communities conducting distinct agricultural practices (Docker and Robinson |
| 2. Local farming community’s response to drought is confined by government-controlled funding and water allocation (Docker and Robinson | |
| Government assistance | 1. Encourages reliance on resources and financial assistance from the government after a drought event has occurred (Kirby et al. |
| 2. Historically, eligibility criteria for financial assistance is generalised over the entire basin area (Kirby et al. |
Definitions for each of the selected hazard, vulnerability, and exposure indicators
| Index | Indicator | Definition |
|---|---|---|
| Hazard | SPI | The standardised precipitation index (SPI) is universally used to measure and monitor meteorological drought. It is defined as the difference of precipitation (rainfall) from the mean for a specified time divided by the standard deviation, with both the mean and the standard deviation derived from the climatological record (Kuleshov et al. |
| VHI | The vegetation health index (VHI) is derived as a space-based observational product and is used for identifying drought-related stress on vegetation (Kuleshov et al. | |
| Vulnerability | Agricultural occupation | Agricultural occupation is the % of the total population over the age of 15 in a given LGA that is employed in the agriculture industry |
| Average household income | Is the average across all households, in a given LGA, of the total gross income (AUD) before taxes earnt within a 12-month period by all members of a household | |
| Exposure | Land use type | Land use type in this study refers to the major form of land use within a given LGA |
| Elevation | In this research, elevation is referred to as the average height above sea level of an LGA. Higher elevation is generally associated with reduced soil moisture and water available for production, and vice versa (Irmak et al. |
Weights assigned to each indicator informing the hazard index, vulnerability index, and exposure index, on a 0.000–1.000 scale
| Index | Indicator | Assigned weight | Literature consulted for expert weight |
|---|---|---|---|
| Hazard | SPI | 0.500 | Svoboda and Fuchs ( |
| VHI | 0.500 | ||
| Total Index Weight | 1.000 | ||
| Vulnerability | Agricultural Occupation | 0.485 | Frischen et al. ( |
| Average Household Income | 0.515 | ||
| Total Index Weight | 1.000 | ||
| Exposure | Land Use | 0.740 | Dayal et al. ( |
| Elevation | 0.260 | ||
| Total Index Weight | 1.000 | ||