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to collect appropriate to your hypothesis? For example, if you are examining nitrogen use efficiency in soybeans, you will probably need to account for nutrient inputs, crop uptake, leaching, and gaseous losses. You will also need meteorological and soil data for context. All of this data is relevant to your hypothesis. Other data may not be appropriate. For example, the traits of your soybean species relating to disease resistance might be relevant to soybean research in general, but if it is not a factor in nitrogen use efficiency, then examination of these traits (which are important themselves) are not appropriate to your study.

      Sufficient data means that you have enough measurements to satisfactorily answer your research question. That means enough sites, variables, blocks and/or plots, and replicates. In crop studies, it may mean having multiple growing seasons. There is no real rule of thumb for this. Let the literature guide you and if possible, consult a statistician before beginning your experiment. It is not pleasant to realize that more replications are needed once a study has started, and even worse to discover once the field trial is “finished”!

      Finally, you need timely data. That means that both the collection and analysis of the data is physically achievable for you and your coinvestigators, and ultimately, possible within your project timeframe. This is closely related to having sufficient data, and a balance must be achieved between gathering enough samples and completing your research in good time. If you have embarked on a two‐year MS program, there is little point in designing a field experiment involving three years of monitoring! This might seem obvious, but it is very common for fieldwork to overrun projected timescales.

      Some whys:

       To obtain data that will allow you to examine a hypothesis or question

       To provide contextual information

       To examine “real‐world” case studies

       To gain skills and experience

       To test the performance of devices, processes, or tools

      For graduate students there are two main concurrent goals. First, to explore and hopefully fill a knowledge gap in their particular discipline, by conducting a series of related experiments culminating in a thesis. The other goal is to develop skills that they can apply to other research projects or to industry. This goal is by no means less important than the scientific objective. Fieldwork is a fantastic opportunity to develop practical skills, problem solving, logistical skills, and teamwork. It is often relatively simple to get a sensor working in the lab when you have tools at hand, good lighting, and someone to ask for help. Can you do it on a rainy day, far from your office when you can't find your screwdriver? From an employer's perspective, the exact detail of your (no doubt important and complex) past research may or may not be interesting or applicable to the role you are interviewing for, but your ability to learn and apply practical skills will help you to be useful and effective in any situation.

      Before embarking on a campaign of fieldwork, ask yourself these questions:

      1 What am I trying to examine?This is the first and most important question to ask yourself. It must be related to your hypothesis or question. Your fieldwork must do one (or both) of the following:Provide information that either proves or disproves your hypothesis. For example, your hypothesis might be “Soil compaction reduces the yield of perennial ryegrass over three years.” Your fieldwork must then measure differences in the yield of perennial ryegrass under both compacted and non‐compacted conditions. Critically, it must be measured over three years. A two‐year study won't answer your hypothesis!Provide contextual information that helps explain your results or their implications. For example, let's say you conduct an incubation study in the laboratory to measure denitrification in soil at various temperatures. In that scenario, you can impose whatever temperatures you like. What temperatures are actually encountered in a real soil, outdoors and exposed to the weather? So, you might conduct fieldwork in which you install sensors to measure temperature over time. This provides context for your laboratory study and helps you to examine its relevance in the discussion section of your paper or thesis.

      2 What treatments do I need to examine my hypothesis?A treatment is the condition, practice, or manipulation that you apply to your field site. This will depend entirely on your hypothesis, and in many field studies, multiple treatments may be applied either in isolation or in combination with one another. In surveys or case studies, there may not be any treatments at all, since you are measuring the state of a person, place, animal, or thing, or are documenting a particular event or situation. When a treatment is applied, there should always be a control that is not modified, against which you can compare your results.

      3  What do I need to measure?Again, this comes down to your hypothesis. You need to measure the variables that you expect might be altered by your treatment. If you are examining the effects of light pollution in urban areas on the behavior of a certain bird species, then you might want to measure how frequently the birds eat, sleep, mate, or sing. However, you must also quantify the treatment. In this case, how many hours of light are the birds subject to, relative to a non‐polluted situation?Collecting supplementary information during your fieldwork is also useful because it either helps explain what you observed or it may help your reader to evaluate how applicable or transferable your results are to their own situation (Fig. 1.9). Some examples are location (latitude, longitude, elevation, country) or weather variables (precipitation, temperature, humidity). There are, of course, many other details that are relevant in different fields of study, so think carefully before launching your field campaign. It is usually far easier to collect data at the time rather than returning for further data collection when a reviewer has asked for it! Look at the literature on related studies as a guide. For example, if everyone conducting a river survey typically describes whether their study area is a first, second, or third order stream, this is a good indicator to you that this is highly relevant information. As you become more familiar with your field of study identifying what contextual measurements you should take will become more obvious.

      4 How should I take measurements?There are often several methods or tools available for measuring a certain parameter. For example, soil hydraulic conductivity can be measured using a double‐ring infiltrometer, a transducer infiltrometer, an Amoozemeter, a falling head test, a constant head test, and others. The differences between these devices might seem subtle or minor until you become familiar with them, but might be vital when it comes to interpreting your results. There is often an element of availability that needs to be considered here. What tools and facilities can you access? Can your university or research institute provide training, or can you buy or rent equipment? Can you outsource analysis for specific tests? How time‐consuming and how expensive are the various options?Fig. 1.9 Weather information is one category of supplementary data that can be helpful in interpreting or contextualising the results of your field experiment, although it can be useful in it’s own right also.Source: Sara Vero.Most importantly, be thorough in your literature review. Consider what methods are used in related research and why. Don't be afraid to contact the authors of the papers which you are referencing. They will often be able to explain exactly why they used particular methodologies and to offer advice.

      5 What

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