At a Glance
- Tasks: Conduct innovative research on soil hydrology using machine learning and geostatistics.
- Company: Join a leading research institute focused on sustainable agriculture and climate resilience.
- Benefits: Fully funded 4-year PhD with stipend and tuition coverage for UK students.
- Why this job: Make a real difference in tackling climate challenges affecting farming in Scotland.
- Qualifications: First-class honours degree or 2.1 plus Masters in a relevant field required.
- Other info: Collaborate with experts and gain hands-on experience in cutting-edge research.
The predicted salary is between 36000 - 60000 £ per year.
Farming in Scotland faces increasing pressure from extreme weather events, with floods and droughts threatening productivity, soil health, and water security. Yet, most monitoring remains confined to the topsoils, overlooking subsoil layers (0–2 m) that control infiltration, storage, and runoff generation. Conventional statistical approaches and pedotransfer estimates cannot capture the vertical heterogeneity of soil processes that regulate water movement. DeepSoil addresses this evidence gap by integrating Cone Penetration Testing (CPT) with machine learning (ML) and geostatistics to map soil infiltration and water storage functions.
We operationalise two project‑defined, CPT‑derived indices, Infiltration capacity (I*) and Storage potential (S*), to quantify how water moves and is retained in the soil profile. Using CPT profiles calibrated with intact soil cores, the project will create 10 m (field) and 25 m (catchment) resolution maps of soil hydraulic functioning across the soil profile, enabling early identification of flood- and drought-prone zones. Soil degradation already costs Scottish agriculture an estimated £25–75 million annually through compaction alone, and each 1 % increase in runoff can raise flood losses by £57–76 k per affected property, underscoring the urgency of improved hydrological risk screening.
Aims and Objectives
The project aims to develop an integrated CPT–ML–geostatistical framework for deriving and mapping the I* and S* indices to assess soil resilience under climatic and land‑use pressures. Its objectives are to:
- calibrate CPT data against soil cores and hydraulic tests;
- upscale point measurements using ML and kriging to produce uncertainty‑aware maps;
- combine static capacity with dynamic environmental data (rainfall, soil moisture, PET) to identify flood and drought hotspots.
Outputs will include validated maps, uncertainty layers, and dashboards to inform sustainable land and water management.
Methods and Approach
Representative sample locations will be statistically determined to obtain CPT soundings and co‑located soil cores across two long‑term experimental platforms: the Centre for Sustainable Cropping (CSC), in Balruddery Farm, offering over a decade of soil health data under regenerative and conventional management, and the Glensaugh Climate‑Positive Farming Initiative (CPFI), representing hill farming and upland soil contexts. CPT variables (qₚ, fₛ, u₂) will be calibrated to measured hydraulic properties, producing local I* and S* values. ML models (e.g. Random Forest) will predict I* from covariates such as terrain indices, geology, land cover, and Sentinel indices, while S* will be interpolated using kriging with uncertainty propagation. These static maps will be fused with CHESS‑SCAPE rainfall, COSMOS‑UK and river flow from SEPA gauges to generate dynamic flood/drought indicators validated against observed events. Technical considerations include corrections for peat and stony tills, CPT normalisation, and explicit treatment of measurement and model uncertainty.
Eligibility and Funding
This 4yr PhD project is a competition jointly funded by The James Hutton Institute and Abertay University. This opportunity is open to UK students and will provide funding to cover a stipend and UK level tuition. International students may apply, but must fund the difference in fee levels between UK level tuition and international tuition fees. Students must meet the eligibility criteria as outlined in the UKRI guidance on UK and international candidates. Applicants will have a first‑class honours degree in a relevant subject or a 2.1 honours degree plus Masters (or equivalent).
PhD Student Vacancy Only: DeepSoil: Integrated Soil Hydrological Assessment with CPT–ML for Flo[...] in Dundee employer: The James Hutton Institute
Contact Detail:
The James Hutton Institute Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land PhD Student Vacancy Only: DeepSoil: Integrated Soil Hydrological Assessment with CPT–ML for Flo[...] in Dundee
✨Tip Number 1
Network like a pro! Reach out to current PhD students or faculty in the field of soil hydrology. They can provide insights and might even give you a heads-up about opportunities before they’re advertised.
✨Tip Number 2
Get your hands dirty with relevant projects! Whether it’s volunteering for research or working on related coursework, practical experience will make you stand out. Plus, it shows your commitment to the field.
✨Tip Number 3
Prepare for interviews by brushing up on your technical knowledge. Be ready to discuss how machine learning and geostatistics apply to soil assessment. We want to see your passion and understanding of the subject!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, we love seeing candidates who are proactive about their job search.
We think you need these skills to ace PhD Student Vacancy Only: DeepSoil: Integrated Soil Hydrological Assessment with CPT–ML for Flo[...] in Dundee
Some tips for your application 🫡
Tailor Your CV: Make sure your CV reflects the skills and experiences that are relevant to the DeepSoil project. Highlight any experience with machine learning, soil science, or hydrological assessments. We want to see how you can contribute to our mission!
Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you're passionate about this PhD opportunity and how your background aligns with the project's aims. Be genuine and let your enthusiasm for the subject come through.
Showcase Relevant Projects: If you've worked on projects related to soil assessment, machine learning, or environmental science, make sure to mention them. We love seeing practical applications of your skills, so don’t hold back on sharing your achievements!
Apply Through Our Website: To make sure your application gets the attention it deserves, apply directly through our website. It’s the best way for us to keep track of your application and ensure it reaches the right people!
How to prepare for a job interview at The James Hutton Institute
✨Know Your Soil Science
Make sure you brush up on your knowledge of soil hydrology and the specific methods mentioned in the job description, like Cone Penetration Testing (CPT) and machine learning. Being able to discuss these topics confidently will show that you're genuinely interested and well-prepared.
✨Prepare for Technical Questions
Expect questions that dive deep into your understanding of geostatistics and how they apply to soil assessment. Review relevant case studies or projects you've worked on that relate to soil resilience and hydrological risk screening, as these will likely come up during the interview.
✨Showcase Your Research Skills
Be ready to talk about your previous research experiences, especially those involving data analysis and mapping. Highlight any experience with machine learning models or statistical software, as this aligns perfectly with the project's objectives.
✨Ask Insightful Questions
Prepare thoughtful questions about the project’s aims and methodologies. Inquire about the long-term goals of the DeepSoil project or how they plan to integrate dynamic environmental data. This shows your enthusiasm and helps you gauge if the role is the right fit for you.