Key performance indicators for production - Examples from chemical industry. Krister Forsman

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Transcription:

Key performance indicators for production - Examples from chemical industry Krister Forsman 2016-04-08

Agenda Short presentation of the Perstorp group Characteristics of chemical plants; business- and technology-wise Which information is readily available from the plants: some examples Key performance indicators (KPIs): Examples illustrating the complexity Variable costs OEE K. Forsman, 2016-04-08, No. 2

Characteristics of chemical plants (A view slightly biased by Perstorp experience)

Characteristics of typical Perstorp plants Synthesis (reaction) followed by a large number of separation steps Reaction is often batch-wise, and separation continuous Separation can be a number of sequential distillations, evaporations, crystallizations, filtrations, centrifuges, decanters, etc Many intermediate buffers High value side streams (byproducts), means many recycle loops Plants operate 24/7 Controlled by computerized control systems K. Forsman, 2016-04-08, No. 4

Many types of process units in one plant Reactors Continuous, batch, semi-batch, tube Heat exchangers Distillation columns Crystallizers Evaporators Centrifuges Filters Decanters Dryers Boilers To define sensible key performance indicators (KPIs) you need fairly deep process knowledge. K. Forsman, 2016-04-08, No. 5

Valuable by-products gives complex topology A chemical reaction rarely gives one specific output. Some of the by-products may be very valuable. For this reason the separation part of the plant is often much more complex than the synthesis part (reactors). Separation = distillations, crystallizations, centrifuges, decanters, evaporators... K. Forsman, 2016-04-08, No. 6

Topology for plant with multiple separations (Loosely based on a true story) Raw material 1 Waste Raw material 2 Reaction Separation Separation Product 1 Raw material 3 Waste Product 3 Separation Separation Product 2 Main product K. Forsman, 2016-04-08, No. 7

Business aspects The market characteristics for different products differ widely Bulk product vs Specialty product Many small customers vs A few large customers Local vs Global products Spot market vs Contracts Make to order vs Make to stock Postponement in product specification possible or not possible Raw material internally or externally supplied; Main customer internal or external This can make it very hard to answer questions like What is the value of getting extra capacity? How much profit do we lose if we have an unexpected shutdown? K. Forsman, 2016-04-08, No. 8

Decision making / work flow in production Sales Forecasts Global supply chain Inventory levels, plant capacities etc Monthly master plans Customers Orders Local supply chain Maintenance needs, etc Daily plans Maintenance Production management Operators Process engineers

Information available from plants

Process historian: Core of all production KPIs IP.21 = Process history database (standard software from supplier) Makes plant measurements available to office applications Every production site has its own IP21 server All variables from the control systems are logged; including setpoints, controller modes, on-off-valves, etc. Scan frequency varies from site to site, between 1 and 15 seconds. Currently ca 500 users of the client application ODBC connections to home made applications ~1 GB new data / day The control group is owner of the IP21-systems. K. Forsman, 2016-04-08, No. 11

In-house developed applications We have developed a number of applications based on IP.21 data; see examples on the following slides. Main principles: All applications are web based. Users don t have to install a client application Access rights controlled by ActiveDirectory Software components in the applications: MS SQL databases IP.21 SQL queries and procedures Matlab ASP and VB programs HTML / related Reporting services from AspenTech and/or MS MS Sharepoint K. Forsman, 2016-04-08, No. 12

Production portal An Intranet website presenting volumes produced for the 40 most important plants in the group, day by day. Altogether ~1500 home pages automatically updated every morning. Production is estimated from process measurements in IP.21; many models are fairly complex. 300 users. In a user survey, 20% of the respondents say that the portal has had direct business impact. K. Forsman, 2016-04-08, No. 13

Production Portal: Detailed view 1000 December Production in tons 500 Planned production Planned production Maximum Actual Maximum Actual capacity production production 0 12-01 12-08 12-15 12-22 12-29 K. Forsman, 2016-04-08, No. 14

Example: Planned and unplanned shutdowns K. Forsman, 2016-04-08, No. 15

Key performance indicators 1. Variable costs

KPI definitions: depend on usage When defining a KPI it is key to think about how it should be used, and by whom. Financial KPIs are the bottom line, of course. What were the costs (raw material, energy, salaries etc) What were the contribution margins (sales price production cost) etc However, those KPIs are almost useless for measuring plant performance. Now we will discuss why, and how we can define KPIs that are more relevant for plant optimization. K. Forsman, 2016-04-08, No. 17

Different categories of KPIs High-level / Financial Examples: Volume produced, Production costs, Inventory turnover High-level / Operational Examples: Safety related, Environmental, OTIF Technical / Process specific Examples: Quality, Key lab values, Energy usage per unit, Unit availability, Heat transfer coefficient, Distillation reflux rate, Plant utilization rate Technical / Generic Examples: Alarm rates, Control loop performance, Valve diagnostics Challenges Find KPIs that separate effects from planning, plant operation and market. Find a connection between high and low level KPIs. Then we could drill down to find root causes. K. Forsman, 2016-04-08, No. 18

Important KPI: Variable costs In process industry, variable costs are often much larger than fixed costs Examples of variable costs Raw material Utilities; Typically steam, electricity, cooling water, waste water treatment, nitrogen, air,... Transport Packaging Often time, costs for raw material and utilities are much larger than other variable costs. From now on we exclude transport and packaging from variable costs. DVC = direct variable costs K. Forsman, 2016-04-08, No. 19

Direct variable costs Raw material Utilities DVC Transport Packaging K. Forsman, 2016-04-08, No. 20

Direct variable costs Chemical A Chemical B Raw material... Steam Electricity Utilities DVC... Transport Packaging K. Forsman, 2016-04-08, No. 21

DVC depends on raw material prices Volume consumed [ton] Price [SEK/ton] Raw material cost [SEK] Raw material prices vary rapidly, with large variations If you are working with procurement or supply chain, planning inventories or choosing suppliers, this is important information. But if you work with plant optimization, raw material price an external factor which we can t affect. To handle that, we can use Relative cost, where prices are fixed over a long period of time. E.g. budget prices K. Forsman, 2016-04-08, No. 22

Specific cost = cost per ton produced Volume consumed [ton] Fixed price [SEK/ton] Specific relative cost [SEK/ton] Volume produced [ton] Example: In January we consumed 1200 tons of methanol to make 2500 tons of product A (obviously there are other raw materials as well) The budget price for MeOH is 4 ksek/ton The specific relative cost for methanol for the month was then 1200*4 / 2500 = 1.92 ksek/ton K. Forsman, 2016-04-08, No. 23

Typical cost summary Month: January Volume produced: 2000 tons Material Consumption [ton] Consumption rate [ton / ton product] Price [ksek/ton] Cost / ton of product [ksek/ton] Chemical A 1500 0.75 4.2 3.15 Chemical B 400 0.20 5.5 1.10 Chemical C 500 0.10 6.0 0.60 Steam 2000 1.00 0.2 0.20... Total 4.85 K. Forsman, 2016-04-08, No. 24

Is this level of information good enough? Depends on who is going to use it. What conclusions can you draw if DVC is high? How should you improve it? For most plants, variable costs are dependent on production rate. Normally the production cost, per ton, is lower when running the plant at high speed than at low speed. If DVC is high, in the worst case, we get a blame game : Production management blames planning: We were forced to run at a low rate. Planning blames production management: Your plant is too inefficient. The following few slides explain why DVC per ton may depend on production rate, and indicate how this feature varies between different types of plants. K. Forsman, 2016-04-08, No. 25

Energy costs: steam and electricity In a chemical plant steam costs are often much higher than electrical costs. Steam is used e.g. in distillation, evaporation and some reactions. Qualitatively, steam usage depends on production rate as shown below. For some equipment, steam usage doesn t depend on production rate There is a base-load that is independent on production rate Total steam usage Turn-down rate Total volume produced K. Forsman, 2016-04-08, No. 26

Specific steam consumption vs production rate Consequence of the facts on the previous slide: At high rates the steam base load is shared between more tons of product

Opposite effect theoretically possible Depending on how heat exchangers are used, compared to their design capacity, we may get the opposite effect. Details too complicated to describe here. Total steam usage Turn-down rate Total volume produced K. Forsman, 2016-04-08, No. 28

Yield may depend on run rate For many plants, the raw material yield depends on production rate. This dependence, if it exists, is more complicated. It may be either positive or negative. To understand this better we look at how losses of raw material may arise. K. Forsman, 2016-04-08, No. 29

Yield loss characteristics: application dependent Raw material Reaction Separation Product Losses Losses Reaction process: losses = undesired side-reactions or incomplete conversion Separation process, e.g. distillation: losses = imperfect separation Both types of yield losses are hard to model. They depend on a large number of parameters in a complicated way. Loss rate may depend on production rate But if the reaction is batch wise reaction losses should not depend on rate. K. Forsman, 2016-04-08, No. 30

How can yield depend on production rate? For all reaction schemes there is a tree of possible reactions. Which ones dominate depends on temperatures and concentrations. If we produce a undesired by-product in an irreversible reaction, then that raw material is lost forever = yield loss If the reaction from raw material to end product is incomplete, the product may contain raw material = yield loss K. Forsman, 2016-04-08, No. 31

cont d Yield vs Prodn rate In a continuous reactor we may have the situation that as we increase throughput, conversion will decrease. Some of the raw material molecules do not have the time to react to become product. Those process characteristics explain how yield may decrease as production rate increases. The opposite effect is more common, but more complex. K. Forsman, 2016-04-08, No. 32

Minimizing variable cost: not always a good idea It is easy to come up with scenarios where minimizing the variable costs does not give maximum total profit. Example: If raw material yield decreases as production rate increases then there will be a rate which gives maximum total profit. Producing less than that gives less profit because volume is low Producing more than that gives less profit because margin is low K. Forsman, 2016-04-08, No. 33

Example: Trade-off between yield and volume

Byproduct optimization vs yield It may be that we can control the formation on by-products by manipulating a variable that also affects yield or other cost parameters. By running the process in different ways we can get different proportions of by-products. Example: 100 tons of raw material we can produce either of the two below Contribution margin product A = 4 ksek/ton, CM product B = 20 ksek/ton Scenario 1 92 tons of product A 6 tons of product B Yield = 98% Total profit = 92*4 + 6*20 = 488 ksek Scenario 2 86 tons of product A 11 tons of product B Yield = 97% Total profit = 86*4 + 11*20 = 564 ksek Again: Minimizing variable costs may lead to suboptimal operation.

Additional complication: start-up costs Starting up a plant is often very expensive Loss of raw material + Loss of energy It may make more sense to consider DVC/ton as a function of number of shutdowns rather than production rate. If market demand is not very high, this leads to and optimization problem: The production cost per ton is higher at low rates Example: Assume plant capacity is 100 ton/day and we are asked to produce 2000 tons in January. What is best: Producing 65 tons/day during 31 days? Producing 100 tons/day during 20 days, and have 11 days of shutdown? Continuous plants normally have a turn down ratio (as mentioned previously). Minimum speed K. Forsman, 2016-04-08, No. 36

Trending DVC over time: not trivial A consequence of these considerations is that it is not easy to find which parameter to trend over time How do we avoid ending up in discussions like this: Relative DVC/ton Jan Feb Mar Apr May Jun But January was very cold. Higher steam consumption. But in June we were running at low rate because of low demand. But in March we had a maintenance shutdown. K. Forsman, 2016-04-08, No. 37

Possible solution: deviation from model One way to approach this problem: use a model that predicts DVC, and compare with the prediction. The model should not take all known factors into account, only those that are not supposed to be addressed by the user of the KPI E.g. if the user is supposed to improve reliability, then DVC increase due to unplanned shutdowns should not be included in the model. Relative DVC/ton Deviation from model K. Forsman, 2016-04-08, No. 38

Example of production related KPI Model based steam usage evaluation Intended user: operational staff (operators and process engineers) Scope: detect excessive steam usage in different units The target steam usage for each unit is given by a model. The model takes into account all variables that operational staff cannot affect, e.g. production rate and outdoor temperature. For every unit, current steam consumption is compared with the consumption predicted by the model. Steam meters show current consumption and target in real time Too high usage results in meter turning yellow or red K. Forsman, 2016-04-08, No. 39

Summary on DVC Variable costs are affected by yield and energy usage They often depend on production rate Normally, energy usage per ton of product decreases with production rate Start-ups are often very expensive There are many theoretical explanations to why the dependency may be positive or negative. In the end you have to study real operational data and verify if the statistical correlations are significant. K. Forsman, 2016-04-08, No. 40

Key performance indicators 2. OEE

OEE = overall equipment efficiency A classical KPI that should indicate how efficiently a plant is used, and to some extent the causes of unexploited potential. Traditional definition: OEE is a number between 0% and 100% Obtained by subtracting shutdown losses, quality losses and planned unused capacity due to market situation. Unfortunately there are different interpretations of this KPI. Quality losses Planned shutdowns and slow downs due to market Max capacity Planned shutdowns and slow downs due to maintenance Unplanned shutdowns and slow downs OEE Volume produced

Usage of OEE OEE is of course a very coarse measure, but it can help us to see where to focus improvement efforts: Improved reliability when running? Shorter maintenance shutdowns? Improved quality? K. Forsman, 2016-04-08, No. 43

OEE-related KPIs used at Perstorp In the production portal described earlier we have Max capacity is estimated as best ever seven day running average Planned production manually entered by supply chain Plan can be changed, even retroactively, to cater for external disturbances, e.g. power outages and delays in raw material supply. [Why?] Utilization: volume produced as percentage of theoretical max capacity Loss versus Plan (LvP): Negative deviation from plan, accumulated Only negative deviations are counted. See next slide. K. Forsman, 2016-04-08, No. 44

Total production during month Total production in percent of theoretical max Loss vs plan in tons Loss vs plan in percent of planned monthly production 1000 Dec; 29936 tons (91%); LvP=1158 (4%) Production in tons 500 Planned production Actual production Maximum capacity 0 12-01 12-08 12-15 12-22 12-29 K. Forsman, 2016-04-08, No. 45

Crux: What is an unplanned shutdown? Two extreme cases: Regular maintenance shutdown: planned months or years ahead. Typically lasts for two weeks or more Immediate, out-of-the-blue, shutdown: with only minutes or seconds head warning. E.g. power outage, faulty trips, human error But many shutdowns are somewhere in between: The pump sounds strange and needs to be repaired within a week. Check the list of pending maintenance work requiring shutdown, and try to plan the shutdown timing and duration, so as to optimize this. Example: Fixing the pump only takes 6 hours, but if we have a 12 hour shutdown and fix some other stuff as well, we can postpone the next planned shutdown and get better availability next month. K. Forsman, 2016-04-08, No. 46

Consequence of complex plant topologies It is almost impossible to tell only from DCS data what is the cause of a shutdown or reduced production rate. If many adjoining units are reduced, it is not necessarily the first one in time that is the root cause. Unfortunately, the cause for a slowdown or shutdown is rarely visible in the process data: Leakage Rotating equipment problems, e.g. bearings Human factor Lack of capacity in site wide utilities, such as steam, cooling water, waste water treatment External causes: Disturbances in distribution, supplies K. Forsman, 2016-04-08, No. 47

Standards? There are production KPI standards down to very specific detail for manufacturing industry. But many of those are hard or impossible to carry over to continuous processing. Examples: A continuous plant has a turn-down rate: it has a lowest possible production rate, typically around 60-70% of maximum Variable cost (SEK/ton) for product depends on production rate Start up time and start up costs may be substantial (MSEK, days) A processing unit is typically not on or off. It is fed with a continuous valued flow. Off-spec is not binary. A product not meeting spec may be acceptable by some customers, or possible to sell at a lower price. K. Forsman, 2016-04-08, No. 48

Summary Production KPIs must be defined so that it is clear how they should be used, and by whom. Should they be used to optimize long term planning, short term planning, plant settings or for fault detection? Corresponding users: global production planning, local production planning, production management, process engineers Frequently it takes deep process understanding to define relevant KPIs. The definitions may vary from plant to plant. K. Forsman, 2016-04-08, No. 49